Название: Integrating Neurocomputing with Artificial Intelligence Автор: Abhishek Kumar, Pramod Singh Rathore, Sachin Ahuja, Umesh Kumar Lilhore Издательство: Wiley-Scrivener Год: 2025 Страниц: 327 Язык: английский Формат: pdf (true) Размер: 33.6 MB
Integrating Neurocomputing with Artificial Intelligence provides unparalleled insights into the cutting-edge convergence of neuroscience and computing, enriched with real-world case studies and expert analyses that harness the transformative potential of neurocomputing in various disciplines.
Integrating Neurocomputing with Artificial Intelligence is a comprehensive volume that delves into the forefront of the neurocomputing landscape, offering a rich tapestry of insights and cutting-edge innovations. This volume unfolds as a carefully curated collection of research, showcasing multidimensional perspectives on the intersection of neuroscience and computing. Readers can expect a deep exploration of fundamental theories, methodologies, and breakthrough applications that span the spectrum of neurocomputing.
AI and Machine Learning, Deep Learning is where it is at right now. More and more academics are paying attention to it since it is a relatively young topic that has grown rapidly in the last time. In the current years, there has been a steady improvement in the presentation of CNN models on Deep Learning problems; these models are among the most significant classical structures in the field. Image classification, semantic separation, target identification, and natural language processing employ convolutional neural networks to autonomously learn sample data feature representations. After examining the typical CNN model’s structure to improve performance through system depth and width, this paper examines a model that improves performance even more through an attention mechanism. This study finishes with a summary and analysis of the existing special model structure. A CNN model, hybrid CNN, and LSTM that incorporate text features with language knowledge may improve text language processing.
Throughout the book, readers will find a wealth of case studies and real-world examples that exemplify how neurocomputing is being harnessed to address complex challenges across different disciplines. Experts and researchers in the field contribute their expertise, presenting in-depth analyses, empirical findings, and forward-looking projections. Integrating Neurocomputing with Artificial Intelligence serves as a gateway to this fascinating domain, offering a comprehensive exploration of neurocomputing’s foundations, contemporary developments, ethical considerations, and future trajectories. It embodies a collective endeavor to drive progress and unlock the potential of neurocomputing, setting the stage for a future where Artificial Intelligence is not merely artificial, but profoundly inspired by the elegance and efficiency of the human brain.
Contents:
Preface xv 1 Integrating Fog Computing with AI Model on Decision Making for Distribution of Energy Management 1 2 Construction and Simulation of Hybrid Neural Network and LSTM to Language Process Model 3 An Approach to Ensure the Safety of Industry 4.0 Mobile Robots 33 4 Feature Extrusion and Categorization of Disease by Hybrid Neuro-Fuzzy Computing 49 5 AI Based Neuromorphic Vision to Control the Robotic Drilling Machine 69 6 Design and Development of AI Neuromorphic to Control the Autonomous Driving System 87 7 Design of Brain-Computer Interface System to Develop Humanoid Robot 105 8 AI-Based Neural Network Used to Enhance the Decision-Making System to Improve Operational Performance 123 9 Simulation and Implementation of English Speech Recognition by NLP 139 10 Deep Learning-Based Neuro Computing to Classify and Diagnosis of Ophthalmology by OCT 159 11 Deep CNN-Based Multi-Image Steganography: Private Key 175 12 Automatic Classification of Honey Bee Subspecies by AI-Based Neural Network 191 13 Acoustic Modeling and Evaluation of Speech Recognition by Neural Networks 207 14 Brain-Computer Interface for Humanoid Robot Control Adaptation 227 15 Evaluation and Validation of Type 1 Diabetes Clinical Data by GAN 243 16 Exploring Neuromorphic Computing with Deep Learning: Unveiling Opportunities, Applications, and Overcoming Challenges 261 17 Quantum Neurocomputing: Bridging the Frontiers of Quantum Computing and Neural Networks 287 References 303 Index 307
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