Vishal Ambadas Meshram

@vupune.ac.in

Assistant Professor
Vishwakarma Universitym Pune

Vishal Ambadas Meshram

EDUCATION

PhD in Computer Science

RESEARCH, TEACHING, or OTHER INTERESTS

Computer Engineering, Artificial Intelligence, Computer Vision and Pattern Recognition, Computer Science Applications
38

Scopus Publications

1138

Scholar Citations

14

Scholar h-index

16

Scholar i10-index

Scopus Publications

  • A hybrid CNN model for multi-class freshness and disease detection in local spinach varieties
    Aniket K. Shahade, Priyanka V. Deshmukh, Vidula V. Meshram, Vishal A. Meshram, Disha S. Wankhede, Makarand R. Shahade
    BMC Plant Biology, 2026
    Ensuring the post-harvest quality and health of leafy vegetables is critical for minimizing economic loss, enhancing food security, and promoting sustainable agricultural practices. Spinach, a highly nutritious yet perishable crop, is particularly susceptible to rapid freshness degradation and foliar diseases. While computer vision and deep learning have shown promise for automated quality assessment, existing models often lack the robustness to handle the dual-task classification of both freshness and disease states across diverse local spinach varieties. To bridge this gap, this paper introduces a novel hybrid Convolutional Neural Network (CNN) architecture specifically designed for the multi-class detection of freshness and visual disease symptoms in local spinach leaves. The proposed model synergistically integrates a powerful feature extraction backbone with a tailored attention and fusion mechanism, enhancing its ability to capture discriminative spatial and textural features critical for fine-grained classification. It was trained and validated on a curated dataset comprising high-resolution images of three prominent local varieties (Malabar, Water, and Red spinach) in both fresh and non-fresh conditions. The proposed hybrid model achieved a classification accuracy of 98.36%, significantly outperforming benchmark state-of-the-art models including DenseNet121, ResNet50, and EfficientNetB0. Furthermore, explainable AI (XAI) techniques visually validated the model’s decision-making process, confirming its focus on biologically relevant leaf regions. The results demonstrate that the proposed hybrid framework offers a highly accurate, reliable, and interpretable tool for non-destructive, real-time quality monitoring. This work provides a significant contribution towards intelligent post-harvest management systems, capable of reducing waste and supporting the value chain for local spinach cultivation.
  • PreventativeTestPro: A Scalable Hybrid Testing Framework Utilizing Observability and Generative AI for Proactive Software Quality Engineering
    Soham Patel, Kailas Patil, Vishal Meshram, Prawit Chumchu
    Journal of Visualized Experiments, 2026
    This paper introduces a sophisticated, scalable testing system that integrates observability-driven automation with AI-augmented proactive quality engineering to tackle contemporary software delivery difficulties. The suggested system enhances PreventativeTestPro, an open-source, hybrid testing platform that combines black-box and white-box methodologies, by incorporating an innovative observability-based test orchestration layer. The platform utilizes logs, metrics, events, and traces alongside browser and server-side monitoring to promptly identify anomalies, enhance test case selection, and automate the creation of functional, performance, and security test suites. A distinctive characteristic is the incorporation of large language models (LLMs) to provide root cause insights and autonomously construct new test cases based on production behaviors and identified abnormalities, thus providing adaptive regression coverage and intelligent remediation. The system facilitates concurrent test execution with instantaneous AI-driven log analysis, fostering a continuous feedback loop between operations and testing. It has been validated in several enterprise scenarios, including microservices-based SaaS platforms and SAP BTP ecosystems. Empirical findings from four production deployments and a beta group of 49 engineers indicate a decrease of up to 30% in mean time to resolution, over 95% compliance with SLAs, and substantial improvements in both test coverage and defect traceability. The effortless connection with industry-standard tools illustrates its plug-and-play capability. This research presents a comprehensive, tool-independent, and forward-looking quality engineering methodology consistent with agile and DevOps principles. Future endeavors encompass dynamic anomaly classification through machine learning, extension to mobile and user experience-oriented systems, and augmented large language model capabilities for domain-specific test development and failure forecasting.
  • A Dual-Layer, Content-Aware Framework to Validate Online Student Engagement via ML-Based Comprehension Assessment
    Parinita Chate, Vishal A. Meshram, Kailas Patil
    Ingenierie Des Systemes D Information, 2025
  • Energy-Efficient Machine Learning Based Denoising Techniques for Sustainable Medical Imaging
    Vidula V. Meshram, Vishal A. Meshram, Pallavi Rege, Kailas Patil, Shrikant Jadhav, Gandharva Thite
    Journal of Visualized Experiments, 2025
    Conventional deep learning models have demonstrated denoising potential, but face challenges such as extensive computational load, energy usage, and training time. This study presents an energy-efficient denoising methodology that integrates image enhancement and K-means clustering as preprocessing techniques to improve input quality before applying neural networks. This study proposes an energy-efficient denoising pipeline integrating image enhancement using sharpening kernels and image segmentation through K-means clustering before the application of a convolutional autoencoder. The preprocessing steps enabled the model to identify anatomical boundaries and separate noise-affected regions, thereby improving the input quality and enhancing training convergence. Preprocessing sharpens key image features and distinguishes noise-affected regions, enabling adaptive thresholding and more effective denoising with reduced computational cost. The proposed model was evaluated using publicly available CT and MRI datasets. Performance was assessed through Peak Signal-to-Noise Ratio (PSNR), Structural Similarity Index Measure (SSIM), and classification accuracy. The results showed that PSNR improved from 21.52 dB to 28.14 dB; SSIM increased from 0.7619 to 0.8690, and validation accuracy also improved. The integrated preprocessing reduced training time by ~20% and lowered GPU utilization, thus supporting reproducibility and deployment in computationally constrained environments. The methodology supports sustainable medical imaging practices by minimizing radiation exposure, reducing repeat scans, and extending the lifespan of older imaging equipment. This pipeline contributes to sustainable medical imaging by minimizing radiation exposure, reducing repeat scans, and extending the lifespan of legacy imaging equipment. It is also suitable for remote diagnostics, enhancing telemedicine workflows in low-resource settings. Additionally, the approach supports remote diagnostics, making it suitable for telemedicine applications in low-resource settings.
  • Exponential Similarity Measure Based Selection of Cloud Service Provisioning in Cloud
    Vishal A. Meshram, Suvarna S. Pawar, Vidula V. Meshram, Archana Kale, Kanchan S. Tiwari, Sarita Ambadekar, Mrinai M. Dhanvijay, Manisha A. Dudhedia, Govind S. Pole, Balaji Bodkhe, Shravan H. Gawande
    Mathematical Modelling of Engineering Problems, 2025
  • Applications of machine learning in oilseed crops and industries
    Vishal Meshram, Vidula Meshram, Reshma Pise, Yogesh Suryawanshi, Kailas Patil
    Oil Seed Crops, 2025
    Oilseed crops, such as soybeans, canola, and sunflowers, are important source of vegetable oil and protein. The production and processing of these crops involves various stages, including planting, harvesting, and refining, which can be improved through the application of machine learning. The challenges faced by farmers in each stage of the oilseed crop are different than the challenges faced by the industry while processing the oil seeds. The contemporary technology in the computer field and a subset of artificial intelligence called as machine learning has already proven its potential to solve complex problems. Machine leaning has been widely used to solve the complex problems in the different domains like healthcare, finance sector, and cyber security. Machine learning algorithms can help farmers and industries in different ways while taking production and processing of oilseed crops. In this chapter, we will review the current state of the art in the use of machine learning for oilseed crop production and processing, highlighting the benefits and challenges of these approaches.
  • Explainable multilingual and multimodal fake-news detection: toward robust and trustworthy AI for combating misinformation
    Rohini Jadhav, Vishal Meshram, Amol Bhosle, Kailas Patil, Sital Dash, Shrikant Jadhav
    Frontiers in Artificial Intelligence, 2025
    Fake-news detection requires systems that are multilingual, multimodal, and explainable—yet the majority of the existing models are English-centric, text-only, and opaque. This study introduces two key innovations: (i) a new multilingual–multimodal dataset of 74,000 news articles in Hindi, Gujarati, Marathi, Telugu, and English with paired images, and (ii) Hybrid Explainable Multimodal Transformer Fake (HEMT-Fake) that integrates text, image, and relational signals with hierarchical explainability. The architecture combines transformer embeddings, a convolutional neural network–bidirectional long short-term memory (CNN–BiLSTM) text encoder, residual network (ResNet) image features, and graph sample and aggregate (GraphSAGE) metadata, all of which are fused via multi-head attention. Its explainability module unites attention, Shapley Additive exPlanations (SHAP), and local interpretable model-agnostic explanations (LIME) to provide token-, sentence-, and modality-level transparency. Across four languages, HEMT-Fake delivers a ~ 5% Macro-F1 improvement over Cross-Lingual Language Model with RoBERTa (XLM-R) architecture and Multilingual Bidirectional Encoder Representations From Transformers (mBERT), with gains of 7–8% in low-resource languages. The model achieves 85% accuracy under adversarial paraphrasing and 80% on artificial intelligence (AI)-generated fake news, halving robustness losses compared to baselines. Human evaluation reveals that 82% of explanations are judged to be meaningful, confirming transparency and trust for fact-checkers.
  • Review of Self-driving Car Based on NEAT Algorithm
    Om Hotkar, Prahas Nambiar, Amol Dhumane, Shwetambari Chiwhane, Aditi Sharma, Deepak Dharrao, Vishal Meshram
    Lecture Notes in Networks and Systems, 2025
  • Mitigating urban heat island and enhancing indoor thermal comfort using terrace garden
    Girish Visvanathan, Kailas Patil, Yogesh Suryawanshi, Vishal Meshram, Shrikant Jadhav
    Scientific Reports, 2024
    The United Nations advocates for sustainable urban planning and design, emphasizing green infrastructure initiatives to mitigate urban heat island effects and enhance the resilience and livability of cities globally. To address urban heat challenges, a study was conducted in Chennai, India, from April to June 2023. The study focused on assessing temperature dynamics on a building's terrace by comparing a well-maintained garden area with an exposed region. Temperature and humidity sensors were deployed in both the garden and exposed areas of the terrace, as well as within rooms beneath it, to monitor hourly temperature fluctuations. The findings indicate a significant reduction in internal room temperatures in areas with rooftop gardens, ranging from 4 to 11 °C, depending on the time of year and sun's position, compared to rooms with fully exposed roof configurations. Additionally, simulation studies were performed to validate these findings, suggesting that optimizing the distribution of soil beds and plant density across the roof could yield an additional temperature reduction of 3–4 °C, resulting in an overall difference of up to 14–15 °C. The study highlights the efficacy of rooftop gardens in providing cooling effects during daylight hours and maintaining temperature parity post-sunset. Through analysis of sensor data, the research elucidates the intricate relationship between green infrastructure and thermal comfort, offering insights for energy-efficient building design and resilient urban planning. The findings underscore the potential of rooftop gardens in fostering a more comfortable, energy-efficient, and sustainable urban living environment.
  • Retraction Notice: Texture Based Image and Video Analysis (2024 15th International Conference on Computing Communication and Networking Technologies (ICCCNT) DOI: 10.1109/ICCCNT61001.2024.10723926)
    Mohan Garg, J Joyce Jacob, Tusha, Gopalakrishna V Gaonkar, Vishal A. Meshram, T. Kuppuraj
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
    Texture-based picture and video analysis is a field of PC vision and photograph processing that explores the use of textures as visible descriptors for the characterization and analysis of virtual pictures. This consists of techniques for extraction of textural capabilities, class and segmentation of images, and synthesis of texture-based total consequences. It is useful for a myriad of programs in numerous domain names, including clinical imaging, robotic navigation, video surveillance, anomaly detection, and biometric identification. The principle strategies utilized in texture-based picture and video analysis include mathematical morphology, Gabor filters, Markov random fields, wavelets, and scaling capabilities, gray-stage co-incidence matrices (GLCMs), vicinity and shape functions, and texture synthesis. Mathematical morphology is used for processing geometrical systems in a photo by setting policies for combining pixels in a normal or irregular grid. Gabor filters are used for developing strength profiles of pixels by means of convolving a photograph with sinusoidal capabilities. Markov random fields are used for modeling the spatial interactions inside a photo with the purpose of explaining the statistical houses of the boundary pixels. Wavelets and scaling features are used for decomposing a photo into multiresolution coefficients.
  • Retracted: Exploring the Potential of Machine Learning in Automated Real-Time Data Analysis Systems (2024 15th International Conference on Computing Communication and Networking Technologies (ICCCNT) DOI: 10.1109/ICCCNT61001.2024.10724206)
    P Chandrakala, Vishal A. Meshram, Mansingh Meena, M S Nithya, Intekhab Alam, V. Mathan Kumar
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • A Comparative Analysis of Routing Protocols in Vehicular Delay-Tolerant Networks
    Jatin Khurana, R Roopashree, Vishal A. Meshram, N. V. Balaji, Shikhar Gupta, R Reena
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • Texture Based Image and Video Analysis
    Mohan Garg, J Joyce Jacob, Tusha, Gopalakrishna V Gaonkar, Vishal A. Meshram, T. Kuppuraj
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • Retracted: Texture Based Image and Video Analysis (2024 15th International Conference on Computing Communication and Networking Technologies (ICCCNT) DOI: 10.1109/ICCCNT61001.2024.10723926)
    Mohan Garg, J Joyce Jacob, Tusha, Gopalakrishna V Gaonkar, Vishal A. Meshram, T. Kuppuraj
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • Exploring the Potential of Machine Learning in Automated Real-Time Data Analysis Systems
    P Chandrakala, Vishal A. Meshram, Mansingh Meena, M S Nithya, Intekhab Alam, V. Mathan Kumar
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • Analyzing the Efficiency of Cross-Layer Design for Location-Aware Ad Hoc Networks
    S Srividhya, Romil Jain, K Preetham, Vishal A. Meshram, K. Yuvaraj, Manpreet Singh
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • Detection of Cardiovascular Diseases Using Machine Learning Approach
    Amol Dhumane, Shwetambari Chiwhane, Mubin Tamboli, Srinivas Ambala, Pooja Bagane, Vishal Meshram
    Communications in Computer and Information Science, 2024
  • Automatic Topic Classification And Document Clustering Using Lda Based Machine Learning Techniques
    K. Yuvaraj, Nipun Setia, Sangeetha S, Prakhar Goyal, Thomas P K, Vishal A. Meshram
    2024 Global Conference on Communications and Information Technologies Gccit 2024, 2024
  • Retraction Notice: Exploring the Potential of Machine Learning in Automated Real-Time Data Analysis Systems (2024 15th International Conference on Computing Communication and Networking Technologies (ICCCNT) DOI: 10.1109/ICCCNT61001.2024.10724969)
    P Chandrakala, Vishal A. Meshram, Mansingh Meena, M S Nithya, Intekhab Alam, V. Mathan Kumar
    2024 15th International Conference on Computing Communication and Networking Technologies Icccnt 2024, 2024
  • Integrated Dashboard for Generative AI Model
    Ruthik Jadhav, Shivam Tikone, Mayur Bahiram, Amol Dhumane, Vishal Meshram, Vidula Meshram, Tanupriya Choudhury, Ayan Sar
    Lecture Notes in Networks and Systems, 2024
  • EFFECTIVE MEDICINE MANAGEMENT FOR VISUALLY IMPAIRED PEOPLE: POCKETMED
    Icic Express Letters, 2023
  • Sen-2 LULC: Land use land cover dataset for deep learning approaches
    Suraj Sawant, Rahul Dev Garg, Vishal Meshram, Shrayank Mistry
    Data in Brief, 2023
  • A comprehensive dataset of damaged banknotes in Indian currency (Rupees) for analysis and classification
    Vidula Meshram, Vishal Meshram, Kailas Patil, Yogesh Suryawanshi, Prawit Chumchu
    Data in Brief, 2023
  • Face mask wearing image dataset: A comprehensive benchmark for image-based face mask detection models
    Yogesh Suryawanshi, Vishal Meshram, Vidula Meshram, Kailas Patil, Prawit Chumchu
    Data in Brief, 2023
  • Concept and administration for developing special education using AI
    Santosh Kumar, Vivek D. Patil, Parikshit N. Mahalle, Vishal Ambadas Meshram
    AI Assisted Special Education for Students with Exceptional Needs, 2023
  • Methodology and framework for AI-based solutions for special education
    Vishal Ambadas Meshram, Santosh Kumar, Vidula V. Meshram, Vivek Patil, Kailas Patil, Laxmi Bewoor, Pravin Gawande
    AI Assisted Special Education for Students with Exceptional Needs, 2023
  • Addressing misclassification in deep learning: A Merged Net approach[Formula presented]
    Vishal Meshram, Yogesh Suryawanshi, Vidula Meshram, Kailas Patil
    Software Impacts, 2023
  • Dry fruit image dataset for machine learning applications
    Vishal Meshram, Chetan Choudhary, Atharva Kale, Jaideep Rajput, Vidula Meshram, Amol Dhumane
    Data in Brief, 2023
  • Evaluation of Top Pretrained Models Using Transfer Learning on Banknote Dataset with Quality Parameter
    Vidula Meshram, Kailas Patil, Vishal Meshram
    Ingenierie Des Systemes D Information, 2023
  • Maximum Bandwidth Allocation in Underwater Fibre Optic Networks
    Vishal A. Meshram, Dhananjay Yadav, Vinitha A, Krishn Murari, Hitesh Kalra, Srisathirapathy S
    1st International Conference on Emerging Research in Computational Science Icercs 2023 Proceedings, 2023
  • Machine Learning Approach for Predicting the Placement Status of Students
    Amol Dhumane, Mubin Tamboli, Srinivas Ambala, Pravin Game, Vishal Meshram, Rahul Patil
    2023 7th International Conference on Computing Communication Control and Automation Iccubea 2023, 2023
  • Border-Square net: a robust multi-grade fruit classification in IoT smart agriculture using feature extraction based Deep Maxout network
    Vishal Meshram, Kailas Patil
    Multimedia Tools and Applications, 2022
  • SmartMedBox: A Smart Medicine Box for Visually Impaired People Using IoT and Computer Vision Techniques
    Vidula V. Meshram, Kailas R. Patil, Vishal A. Meshram, Shripad Bhatlawande
    Revue D Intelligence Artificielle, 2022
  • FruitNet: Indian fruits image dataset with quality for machine learning applications
    Vishal Meshram, Kailas Patil
    Data in Brief, 2022
  • Smart Low Cost Fruit Picker for Indian Farmers
    Vishal Meshram, Kailas Patil, Vidula Meshram, Amol Dhumane, Sudeep Thepade, Dinesh Hanchate
    2022 6th International Conference on Computing Communication Control and Automation Iccubea 2022, 2022
  • Machine learning in agriculture domain: A state-of-art survey
    Vishal Meshram, Kailas Patil, Vidula Meshram, Dinesh Hanchate, S.D. Ramkteke
    Artificial Intelligence in the Life Sciences, 2021
  • MNet: A framework to reduce fruit image misclassification
    Vishal A. Meshram, Kailas Patil, Sahadeo D. Ramteke
    Ingenierie Des Systemes D Information, 2021
  • An Astute Assistive Device for Mobility and Object Recognition for Visually Impaired People
    Vidula V. Meshram, Kailas Patil, Vishal A. Meshram, Felix Che Shu
    IEEE Transactions on Human Machine Systems, 2019

RECENT SCHOLAR PUBLICATIONS

  • Artificial intelligence for early endometrial cancer diagnosis using multimodal clinical data: integrating deep learning, explainability, and data privacy
    S Dash, K Patil, A Bali, IR Raskar, Y Dongre, A Bhosle, V Meshram
    Frontiers in Artificial Intelligence 9, 1787508 , 2026
    2026
  • PreventativeTestPro: A Scalable Hybrid Testing Framework Utilizing Observability and Generative AI for Proactive Software Quality Engineering
    S Patel, K Patil, V Meshram, P Chumchu
    JoVE (Journal of Visualized Experiments), e69316 , 2026
    2026
  • A hybrid CNN model for multi-class freshness and disease detection in local spinach varieties
    AK Shahade, PV Deshmukh, VV Meshram, VA Meshram, DS Wankhede, ...
    BMC Plant Biology , 2026
    2026
  • Dual-Task Convolutional Neural Network for Fruit Classification and Ripeness Prediction
    VV Meshram, K Patil, VA Meshram, AS Chhajed, R Jadhav, R Tanksale
    International Conference on Sustainable Innovation with Artificial … , 2026
    2026
  • Explainable multilingual and multimodal fake-news detection: toward robust and trustworthy AI for combating misinformation
    R Jadhav, V Meshram, A Bhosle, K Patil, S Dash, S Jadhav
    Frontiers in Artificial Intelligence 8, 1690616 , 2025
    2025
    Citations: 7
  • A Dual-Layer, Content-Aware Framework to Validate Online Student Engagement via ML-Based Comprehension Assessment.
    P Chate, VA Meshram, K Patil
    Ingénierie des Systèmes d'Information 30 (10) , 2025
    2025
  • Energy-Efficient Machine Learning Based Denoising Techniques for Sustainable Medical Imaging
    VV Meshram, VA Meshram, P Rege, K Patil, S Jadhav, G Thite
    JoVE (Journal of Visualized Experiments), e68968 , 2025
    2025
  • Exponential Similarity Measure Based Selection of Cloud Service Provisioning in Cloud.
    VA Meshram, SS Pawar, VV Meshram, A Kale, KS Tiwari, S Ambadekar, ...
    Mathematical Modelling of Engineering Problems 12 (5) , 2025
    2025
  • Applications of Machine Learning in Oilseed Crops and Industries
    V Meshram, V Meshram, R Pise, Y Suryawanshi, K Patil
    Oilseed Crops, 455-467 , 2025
    2025
  • Automatic Topic Classification And Document Clustering Using Lda Based Machine Learning Techniques
    K Yuvaraj, N Setia, P Goyal, T PK, VA Meshram
    2024 Global Conference on Communications and Information Technologies (GCCIT … , 2024
    2024
  • A Comparative Analysis of Routing Protocols in Vehicular Delay-Tolerant Networks
    J Khurana, R Roopashree, VA Meshram, NV Balaji, S Gupta, R Reena
    2024 15th International Conference on Computing Communication and Networking … , 2024
    2024
  • Texture Based Image and Video Analysis
    M Garg, JJ Jacob, GV Gaonkar, VA Meshram, T Kuppuraj
    2024 15th International Conference on Computing Communication and Networking … , 2024
    2024
  • Exploring the Potential of Machine Learning in Automated Real-Time Data Analysis Systems
    P Chandrakala, VA Meshram, M Meena, MS Nithya, I Alam, VM Kumar
    2024 15th International Conference on Computing Communication and Networking … , 2024
    2024
  • Analyzing the Efficiency of Cross-Layer Design for Location-Aware Ad Hoc Networks
    S Srividhya, R Jain, K Preetham, VA Meshram, K Yuvaraj, M Singh
    2024 15th International Conference on Computing Communication and Networking … , 2024
    2024
  • Review of Self-driving Car Based on NEAT Algorithm
    O Hotkar, P Nambiar, A Dhumane, S Chiwhane, A Sharma, D Dharrao, ...
    International Conference on Advances in Information Communication Technology … , 2024
    2024
  • Mitigating urban heat island and enhancing indoor thermal comfort using terrace garden
    G Visvanathan, K Patil, Y Suryawanshi, V Meshram, S Jadhav
    Scientific Reports 14 (1), 9697 , 2024
    2024
    Citations: 36
  • Integrated Dashboard for Generative AI Model
    R Jadhav, S Tikone, M Bahiram, A Dhumane, V Meshram, V Meshram, ...
    International Conference on Universal Threats in Expert Applications and … , 2024
    2024
    Citations: 2
  • Detection of cardiovascular diseases using machine learning approach
    A Dhumane, S Chiwhane, M Tamboli, S Ambala, P Bagane, V Meshram
    International Advanced Computing Conference, 171-179 , 2023
    2023
    Citations: 4
  • Maximum Bandwidth Allocation in Underwater Fibre Optic Networks
    VA Meshram, D Yadav, K Murari, H Kalra
    2023 International Conference on Emerging Research in Computational Science … , 2023
    2023
  • Face mask wearing image dataset: A comprehensive benchmark for image-based face mask detection models
    Y Suryawanshi, V Meshram, V Meshram, K Patil, P Chumchu
    Data in Brief 51, 109755 , 2023
    2023
    Citations: 7

MOST CITED SCHOLAR PUBLICATIONS

  • Machine learning in agriculture domain: A state-of-art survey
    V Meshram, K Patil, V Meshram, D Hanchate, SD Ramteke
    Artificial Intelligence in the Life Sciences, 100010 , 2021
    2021
    Citations: 541
  • An Astute Assistive Device for Mobility and Object Recognition for Visually Impaired People
    VV Meshram, K Patil, VA Meshram, FC Shu
    IEEE Transactions on Human-Machine Systems , 2019
    2019
    Citations: 165
  • FruitNet: Indian fruits image dataset with quality for machine learning applications
    V Meshram, K Patil
    Data in Brief 40, 107686 , 2021
    2021
    Citations: 105
  • Sen-2 LULC: Land use land cover dataset for deep learning approaches
    S Sawant, RD Garg, V Meshram, S Mistry
    Data in Brief 51, 109724 , 2023
    2023
    Citations: 37
  • Mitigating urban heat island and enhancing indoor thermal comfort using terrace garden
    G Visvanathan, K Patil, Y Suryawanshi, V Meshram, S Jadhav
    Scientific Reports 14 (1), 9697 , 2024
    2024
    Citations: 36
  • MNet: A framework to reduce fruit image misclassification.
    VA Meshram, K Patil, SD Ramteke
    Ingénierie des systèmes d Inf. 26 (2), 159-170 , 2021
    2021
    Citations: 27
  • A survey on ubiquitous computing
    V Meshram, V Meshram, K Patil
    ICTACT Journal on Soft Computing 6 (2), 1130-1135 , 2016
    2016
    Citations: 26
  • Fruitsgb: top Indian fruits with quality
    V Meshram, K Thanomliang, S Ruangkan, P Chumchu, K Patil
    IEEE Dataport , 2020
    2020
    Citations: 25
  • SmartMedBox: A smart medicine box for visually impaired people using IoT and computer vision techniques
    VV Meshram, KR Patil, VA Meshram, S Bhatlawande
    Revue d'Intelligence Artificielle 36 (5), 681 , 2022
    2022
    Citations: 23
  • Addressing misclassification in deep learning: a merged net approach
    V Meshram, Y Suryawanshi, V Meshram, K Patil
    Software Impacts 17, 100525 , 2023
    2023
    Citations: 16
  • A comprehensive dataset of damaged banknotes in Indian currency (Rupees) for analysis and classification
    V Meshram, V Meshram, K Patil, Y Suryawanshi, P Chumchu
    Data in Brief 51, 109699 , 2023
    2023
    Citations: 15
  • FruitNet: Indian fruits dataset with quality (good bad & mixed quality)
    V Meshram, K Patil
    Mendeley Data 1 , 2021
    2021
    Citations: 15
  • Border-Square net: a robust multi-grade fruit classification in IoT smart agriculture using feature extraction based Deep Maxout network
    V Meshram, K Patil
    Multimedia Tools and Applications 81 (28), 40709-40735 , 2022
    2022
    Citations: 14
  • A Comparative Analysis of Intrusion Detection Techniques: Machine Learning Approach
    VM Komal Rasane, Laxmi Bewoor
    Proceedings of International Conference on Communication and Information … , 2019
    2019
    Citations: 14
  • Dry fruit image dataset for machine learning applications
    V Meshram, C Choudhary, A Kale, J Rajput, V Meshram, A Dhumane
    Data in Brief, 109325 , 2023
    2023
    Citations: 13
  • Smart low cost fruit picker for Indian farmers
    V Meshram, K Patil, V Meshram, A Dhumane, S Thepade, D Hanchate
    2022 6th International Conference On Computing, Communication, Control And … , 2022
    2022
    Citations: 13
  • Evaluation of top pretrained models using transfer learning on banknote dataset with quality parameter
    V Meshram, K Patil, V Meshram
    Ingénierie des Systèmes d'Information 28 (3), 693 , 2023
    2023
    Citations: 9
  • Explainable multilingual and multimodal fake-news detection: toward robust and trustworthy AI for combating misinformation
    R Jadhav, V Meshram, A Bhosle, K Patil, S Dash, S Jadhav
    Frontiers in Artificial Intelligence 8, 1690616 , 2025
    2025
    Citations: 7
  • Face mask wearing image dataset: A comprehensive benchmark for image-based face mask detection models
    Y Suryawanshi, V Meshram, V Meshram, K Patil, P Chumchu
    Data in Brief 51, 109755 , 2023
    2023
    Citations: 7
  • Dataset of indian and thai banknotes
    V Meshram, P Thamkrongart, K Patil, P Chumchu, S Bhatlawande
    IEEE Dataport , 2020
    2020
    Citations: 6