Assistant Professor (Senior Grade) / Department of Computer Science & Engineering and Information Technology Jaypee Institute of Information Technology
Leveraging DCGANs and Cyclic GANs for Synthetic MRI Image Generation and Neural Network Optimization Kirti Aggarwal, Vikalp Srivastava, Kunal Kartikeya Generative Artificial Intelligence Technology and Applications, 2025 In the field of healthcare imaging, the utilization of synthetic data shows considerable potential for addressing challenges associated with data scarcity and privacy concerns. This paper delves into the implementation details and challenges encountered in a Magnetic Resonance Imaging (MRI) project aiming at generating synthetic MRI images for neural network training. The process begins with data collection from Google API datasets, followed by meticulous preprocessing to ensure data quality and consistency. The generation of synthetic MRI images is facilitated through the deployment of Deep Convolutional Generative Adversarial Networks (DCGANs), which are trained to understand the fundamental pattern of MRI images and generate high-fidelity counterparts. Subsequently, a Cycle-Consistent Generative Adversarial Network (Cyclic GAN) is employed to further refine the quality of synthetic images through iterative translation and reconstruction processes. Concurrently, a Convolutional Neural Network (CNN) model is developed and trained on both real and synthetic MRI datasets to perform neuroimaging tasks such as brain tumor detection. The efficacy of the CNN model on artificial data is thoroughly evaluated, and optimization techniques including fine-tuning of GAN parameters and CNN architecture adjustments are explored to enhance performance. The paper concludes with a comprehensive analysis of the project’s input and output, highlighting the close resemblance between real and synthetic MRI images and affirming the usefulness of artificial data in augmenting neural network training for medical imaging applications.
Genetic algorithm-based framework for optimizing medical image enhancement Kirti Aggarwal, Meenal Jain Computational Intelligence for Connective Cognition Networks Advances and Applications, 2025 Enhancing the quality of medical images is critical for efficient decision-making and correct diagnosis. This research work represents a framework that uses a genetic algorithm (GA) to optimize the process of image enhancement. It addresses various challenges related to the generation of high-quality images from initial data that might contain blurriness, noise, and poor contrast. The proposed method involves producing an enhanced image from an initial image evolved through multiple generations of GA. A fitness function is used through each iteration to assess the quality of produced image. The algorithm proposed in this work continuously evolves the image by applying selection, crossover, and mutation process, until a better outcome is achieved. This approach helps in increasing the visual clarity of regions of interest (ROI) in medical Images. This helps in identifying anomalies and making accurate clinical diagnosis. This work explores the implications of the proposed approach in other domains as well. This work bridges the gap between computational intelligence and practical medical applications by integrating GA within a connective cognition framework.
Machine learning security on drones or UAV Meenal Jain, Kirti Aggarwal Computational Intelligence for Connective Cognition Networks Advances and Applications, 2025 Unmanned aerial vehicles (UAVs) and drone technology have seen significant developments, spurring innovation across several sectors. This chapter summarises a thorough examination of numerous research publications and approaches, emphasising transformational advances and significant challenges in this dynamic topic. Drones offer a range of advantages; however, they can also be used as a means of physical and cyberattack. This chapter examines various applications of drone use in future smart cities with a focus on cybersecurity, self-privacy and safety of the common man. It also provides results on cyberattacks using drones. Finally, the chapter examines the vulnerability of deep learning algorithms used in UAVs to adversarial samples, which could potentially lead to misbehaviour in real-world situations. This chapter thus examines the use of algorithms for the purpose of attacking and defending UAVs, highlighting their importance in maintaining drone security. Simultaneously, the rise of drones, particularly in smaller forms, promises intriguing prospects across industries, with the Internet of Things (IoT) being used for navigational services. However, fundamental design flaws offer significant privacy and security issues within drone networks (NoD), necessitating reinforced infrastructure. The investigation of these problems emphasises the need for better security measures.
Computational Intelligence for Connective Cognition Networks: Advances and Applications Kirti Aggarwal, Anuja Arora, Zahid Akhtar, Alessandro Bruno Computational Intelligence for Connective Cognition Networks Advances and Applications, 2025 The classification of portable document format (PDF) documents from a collection of documents of different languages is an error-prone, tedious, and time-consuming process. This work utilizes deep learning techniques for the efficient classification of such documents. The document classification engine proposed in this work can assist humans in the separation of documents of different languages into different folders. This prevents the document from getting lost if they are not properly labeled and accelerates the process of usage of these documents for proper application. The present work utilizes the documents of three languages for classification. Multiple deep learning algorithms have been applied in the present work including the use of Bi-LSTMs to classify the documents. The proposed model achieved an accuracy of approx. 99%. The advantage of using Bi-LSTM is that it requires much less computing resources as compared to other heavier models. In the present work the results for the proposed methodology are further compared with state-of-the-art methodologies and the results significantly outperformed the existing models.
Neural Network-Driven Simulated Annealing for Trust-Persuasion Optimized Influence Maximization Kirti Aggarwal 2025 17th International Conference on Contemporary Computing Ic3 2025, 2025 An innovative methodology for maximizing the influence in trust-persuasion network by integrating simulated annealing algorithm with a Multi-Layer Perceptron (MLP) regressor is introduced in this paper. The proposed algorithm known as Neural Network-Driven Simulated Annealing (NNDSA) makes use of the adaptive capabilities of the simulated annealing algorithm, guided by realization from a trained MLP regressor to find the optimized seed set. By including the trust, persuasion, and opinion factors, NNDSA embodies the diverse aspects of influence propagation. Here trust determines information credibility, persuasion determines message impact and the opinion aspect models the growing beliefs of peoples in the network. Experiments are performed on two datasets: Bitcoin and Advogato, where the NNDSA algorithm with MLP regressor outperforms the one with- out MLP regressor and achieves higher influence propagation, while maintain the attractive execution time. The proposed algorithm with MLP regressor achieves average influence spread of 592.2 on the Bitcoin dataset and 991.2 on the Advogato dataset, outperforming the influence spread achieved without MLP regressor by 36.6 and 6.6 respectively. These finding reflects the potential of NNDSA technique with MLP regressor for the advancement of influence maximization strategies.
Predictive Modeling of Drug-Drug Interactions: A Link Prediction Approach Drishika Chauhan, Navjyot Narang, Pratyasha Shukla, Kirti Aggarwal ACM International Conference Proceeding Series, 2024 This research paper presents a novel approach to predicting drug-drug interactions (DDIs) through the integration of computational methodologies and pharmaceutical expertise. The accurate anticipation of potential interactions between medications is crucial for ensuring patient safety and optimizing therapeutic outcomes in an era marked by a growing array of medications and increasing complexities in drug therapy regimens. Drawing inspiration from the pressing need within the pharmaceutical industry and healthcare sector, this research aims to develop reliable predictive models capable of identifying and mitigating the risks associated with DDIs. Leveraging diverse data sources and cutting-edge machine learning techniques, our methodology encompasses matrix perturbation, similarity-based modeling, and ensemble learning algorithms, each offering unique insights into the underlying mechanisms driving drug interactions. Evaluation metrics including accuracy, F1 Score, and recall are utilized to assess the performance of our model, with visualization techniques providing insights into the dynamics of drug interaction networks. Through comprehensive experimentation and analysis, our findings contribute to advancing drug safety and therapeutic decision-making, ultimately benefiting patient care and public health on a global scale.
Hash-RC6 - Variable length Hash algorithm using RC6 Kirti Aggarwal, Harsh K. Verma Conference Proceeding 2015 International Conference on Advances in Computer Engineering and Applications Icacea 2015, 2015
RECENT SCHOLAR PUBLICATIONS
Pattern transfer based photorealistic synthetic fake image generation using cycle generative adversarial networks A Arora, JM Zaeem, V Garg, K Aggarwal, XZ Gao Discover Artificial Intelligence , 2026 2026
Leveraging DCGANs and Cyclic GANs for Synthetic MRI Image Generation and Neural Network Optimization K Aggarwal, V Srivastava, K Kartikeya Generative Artificial Intelligence, 319-336 , 2025 2025
Machine learning security on drones or UAV M Jain, K Aggarwal Computational Intelligence for Connective Cognition Networks, 44-59 , 2025 2025
Genetic algorithm-based framework for optimizing medical image enhancement K Aggarwal, M Jain Computational Intelligence for Connective Cognition Networks, 27-43 , 2025 2025
Computational Intelligence for Connective Cognition Networks: Advances and Applications K Aggarwal, A Arora, Z Akhtar, A Bruno CRC Press , 2025 2025
Neural Network-Driven Simulated Annealing for Trust-Persuasion Optimized Influence Maximization K Aggarwal 2025 Seventeenth International Conference on Contemporary Computing (IC3), 1-6 , 2025 2025
Deep Learning-Driven CNN Models for Enhanced Brain Tumor Classification K Aggarwal, K Kartikeya, V Srivastava Revolutionizing Healthcare: Impact of Artificial Intelligence on Diagnosis … , 2025 2025 Citations: 1
Stock Indexes Community Identification Using BAT-Modified Optimization Algorithm K Aggarwal, A Arora SN Computer Science 5 (8), 1013 , 2024 2024
ARBP: antibiotic-resistant bacteria propagation bio-inspired algorithm and its performance on benchmark functions K Aggarwal, A Arora Advances in Computational Intelligence 4 (3), 10 , 2024 2024
Predictive Modeling of Drug-Drug Interactions: A Link Prediction Approach D Chauhan, N Narang, P Shukla, K Aggarwal Proceedings of the 2024 Sixteenth International Conference on Contemporary … , 2024 2024 Citations: 2
StressMLIoT: IoT Sensor Features Reduction and Machine Learning driven Stress Identification System S Vinayaka, H Dhariwal, K Aggarwal, A Arora 2023 Second International Conference on Informatics (ICI), 1-7 , 2023 2023
Influence maximization in social networks using discrete BAT-modified (DBATM) optimization algorithm: a computationally intelligent viral marketing approach K Aggarwal, A Arora Social Network Analysis and Mining 13 (1), 146 , 2023 2023 Citations: 14
An intelligent article knowledge graph formation framework using bm25 probabilistic retrieval model JM Zaeem, V Garg, K Aggarwal, A Arora Iberoamerican Knowledge Graphs and Semantic Web Conference, 32-43 , 2023 2023 Citations: 4
Breast Cancer Classification and Survival Prediction Using Proteomic Analysis K Aggarwal, A Arora, J Azzopardi Novel Developments in Futuristic AI-based Technologies, 123-138 , 2023 2023 Citations: 1
Applications of augmented reality in medical training R Garg, K Aggarwal, A Arora Mathematical Modeling, Computational Intelligence Techniques and Renewable … , 2023 2023 Citations: 6
Assessment of discrete BAT-modified (DBAT-M) optimization algorithm for community detection in complex network K Aggarwal, A Arora Arabian Journal for Science and Engineering 48 (2), 2277-2296 , 2023 2023 Citations: 8
Assessment of modified BAT algorithm for MOOC learner influence maximization K Aggarwal, A Arora Proceedings of the 2022 Fourteenth International Conference on Contemporary … , 2022 2022 Citations: 2
Detecting community structure in financial markets using the bat optimization algorithm K Aggarwal, A Arora International Journal of Information Technology Project Management (IJITPM … , 2022 2022 Citations: 2
Influence maximization for MOOC learners using BAT optimization algorithm K Aggarwal, A Arora International Journal of Fuzzy System Applications (IJFSA) 11 (2), 1-19 , 2022 2022 Citations: 7
An approach to control the PC with hand gesture recognition using computer vision technique K Aggarwal, A Arora 2022 9th International Conference on Computing for Sustainable Global … , 2022 2022 Citations: 11
MOST CITED SCHOLAR PUBLICATIONS
Performance evaluation of RC6, blowfish, DES, IDEA, CAST-128 block ciphers K Aggarwal, JK Saini, HK Verma International Journal of Computer Applications 68 (25) , 2013 2013 Citations: 34
Hash_RC6—Variable length Hash algorithm using RC6 K Aggarwal, HK Verma 2015 International Conference on Advances in Computer Engineering and … , 2015 2015 Citations: 21
Comparison of RC6, modified RC6 & enhancement of RC6 K Aggarwal 2015 International Conference on Advances in Computer Engineering and … , 2015 2015 Citations: 19
Influence maximization in social networks using discrete BAT-modified (DBATM) optimization algorithm: a computationally intelligent viral marketing approach K Aggarwal, A Arora Social Network Analysis and Mining 13 (1), 146 , 2023 2023 Citations: 14
An approach to control the PC with hand gesture recognition using computer vision technique K Aggarwal, A Arora 2022 9th International Conference on Computing for Sustainable Global … , 2022 2022 Citations: 11
Assessment of discrete BAT-modified (DBAT-M) optimization algorithm for community detection in complex network K Aggarwal, A Arora Arabian Journal for Science and Engineering 48 (2), 2277-2296 , 2023 2023 Citations: 8
Influence maximization for MOOC learners using BAT optimization algorithm K Aggarwal, A Arora International Journal of Fuzzy System Applications (IJFSA) 11 (2), 1-19 , 2022 2022 Citations: 7
Applications of augmented reality in medical training R Garg, K Aggarwal, A Arora Mathematical Modeling, Computational Intelligence Techniques and Renewable … , 2023 2023 Citations: 6
Hand gesture recognition for real-time game play using background elimination and deep convolution neural network K Aggarwal, A Arora Virtual and Augmented Reality for Automobile Industry: Innovation Vision and … , 2022 2022 Citations: 5
An intelligent article knowledge graph formation framework using bm25 probabilistic retrieval model JM Zaeem, V Garg, K Aggarwal, A Arora Iberoamerican Knowledge Graphs and Semantic Web Conference, 32-43 , 2023 2023 Citations: 4
Predictive Modeling of Drug-Drug Interactions: A Link Prediction Approach D Chauhan, N Narang, P Shukla, K Aggarwal Proceedings of the 2024 Sixteenth International Conference on Contemporary … , 2024 2024 Citations: 2
Assessment of modified BAT algorithm for MOOC learner influence maximization K Aggarwal, A Arora Proceedings of the 2022 Fourteenth International Conference on Contemporary … , 2022 2022 Citations: 2
Detecting community structure in financial markets using the bat optimization algorithm K Aggarwal, A Arora International Journal of Information Technology Project Management (IJITPM … , 2022 2022 Citations: 2
Deep Learning-Driven CNN Models for Enhanced Brain Tumor Classification K Aggarwal, K Kartikeya, V Srivastava Revolutionizing Healthcare: Impact of Artificial Intelligence on Diagnosis … , 2025 2025 Citations: 1
Breast Cancer Classification and Survival Prediction Using Proteomic Analysis K Aggarwal, A Arora, J Azzopardi Novel Developments in Futuristic AI-based Technologies, 123-138 , 2023 2023 Citations: 1
Pattern transfer based photorealistic synthetic fake image generation using cycle generative adversarial networks A Arora, JM Zaeem, V Garg, K Aggarwal, XZ Gao Discover Artificial Intelligence , 2026 2026
Leveraging DCGANs and Cyclic GANs for Synthetic MRI Image Generation and Neural Network Optimization K Aggarwal, V Srivastava, K Kartikeya Generative Artificial Intelligence, 319-336 , 2025 2025
Machine learning security on drones or UAV M Jain, K Aggarwal Computational Intelligence for Connective Cognition Networks, 44-59 , 2025 2025
Genetic algorithm-based framework for optimizing medical image enhancement K Aggarwal, M Jain Computational Intelligence for Connective Cognition Networks, 27-43 , 2025 2025
Computational Intelligence for Connective Cognition Networks: Advances and Applications K Aggarwal, A Arora, Z Akhtar, A Bruno CRC Press , 2025 2025