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Elhanashi A. Deep Learning for Object Detection and Localization 2026
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Category:Other Total size: 6.82 MB Added: 1 hour ago (2026-02-03 22:43:01)
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Description:
Textbook in PDF format
In the ever-evolving field of computer vision, "Deep Learning for Object Detection and Localization" serves as an indispensable resource for researchers, practitioners, and students alike. This comprehensive book delves into the latest advancements and methodologies in Deep Learning, specifically tailored to enhance object detection and localization tasks. From foundational concepts to cutting-edge techniques, readers will embark on a journey through the intricacies of convolutional neural networks (CNNs), region-based frameworks, and advanced algorithms that power modern object detection systems. The purpose of writing this book is to bridge the knowledge gap in the dynamic field of object detection and localization using Deep Learning. As technology progresses, there is an increasing demand for robust and efficient systems capable of identifying and pinpointing objects within images and videos. Despite the plethora of resources available, there remains a need for a focused, in-depth guide that comprehensively covers both theoretical aspects and practical implementations. This book aims to fulfill that need by providing a detailed, structured approach to mastering the complexities of object detection and localization.
Readers will benefit from the problem-solving focus of this book, which addresses key challenges faced in real-world applications. Whether it's enhancing accuracy in autonomous driving, improving precision in medical imaging, or optimizing performance in surveillance systems, the book offers practical solutions and insights. By exploring state-of-the-art techniques and real-world case studies, "Deep Learning for Object Detection and " equips readers with the knowledge and tools necessary to tackle the pressing challenges in this rapidly advancing field.
Modern object detection workflows are based on general-purpose deep learning ecosystems. In the ecosystem landscape, there are two major players, TensorFlow and PyTorch, which are the two most used frameworks. TensorFlow, developed by Google Brain, has a massive ecosystem and has pioneered many tools for building, training and deploying models from edge devices to data centres; even APIs for specialized deployments that facilitate deployment pipelines . PyTorch, developed by Meta AI, has aimed towards the most natural, Pythonic interface with dynamic computation graphs, and a quality developer experience—characteristics that won it the support of academics and industry-level experiments. That being said, PyTorch has debugging and iterative model design features, which are also claimed advantages over TensorFlow.
AutoML frameworks are also transforming how object detection systems are created. Examples include NVIDIA TAO and AutoGluon, both of which try to automate the preprocessing of datasets, hyperparameter optimization, and architecture selection to lower the threshold for non-experts. Google’s Vertex AI encompasses this approach by providing a single interface for managing the complete model lifecycle, from training to deploying, across multiple data modalities. Each platform condenses the detection workflow into more easily-consumed pipelines while abstracting much of the manual engineering historically associated with them