
YOLO Object Detection Explained (eBook, ePUB)
Definitive Reference for Developers and Engineers
PAYBACK Punkte
0 °P sammeln!
"YOLO Object Detection Explained" "YOLO Object Detection Explained" offers a comprehensive and accessible journey through the landscape of modern object detection, illuminating the path from its classical foundations to the cutting-edge innovations that define today's real-time vision systems. The book artfully traces the evolution of detection techniques, contrasting the architectural shifts from traditional handcrafted methods to sophisticated deep learning models like YOLO, SSD, and R-CNN, while contextualizing these advancements within real-world applications and benchmark-driven progress....
"YOLO Object Detection Explained"
"YOLO Object Detection Explained" offers a comprehensive and accessible journey through the landscape of modern object detection, illuminating the path from its classical foundations to the cutting-edge innovations that define today's real-time vision systems. The book artfully traces the evolution of detection techniques, contrasting the architectural shifts from traditional handcrafted methods to sophisticated deep learning models like YOLO, SSD, and R-CNN, while contextualizing these advancements within real-world applications and benchmark-driven progress. Through this historical and technical narrative, readers gain not only a deep understanding of the field but also an appreciation for the performance breakthroughs that have made real-time object perception possible.
Central to the book is an in-depth exploration of the YOLO architecture itself-its unified, end-to-end philosophy, grid-based prediction mechanisms, and continuous refinement across successive versions. With clarity and rigor, the text guides practitioners through the entire YOLO lifecycle, from preparing augmented datasets and configuring models, to mastering advanced training strategies and overcoming deployment challenges across diverse hardware and edge environments. Specialized chapters tackle optimization, postprocessing, quantization, robustness, and production-scale serving, equipping the reader with practical insights for building and maintaining high-performance detection pipelines.
Beyond the core technology, "YOLO Object Detection Explained" addresses the nuanced realities of customizing YOLO for advanced and ethical applications. The book examines scenario-specific adaptations-ranging from healthcare and agriculture to autonomous vehicles and smart cities-while delving into the vital topics of adversarial security, bias mitigation, privacy, and explainability. It concludes with a forward-looking perspective on the future of object detection, surveying hybrid approaches, continual and federated learning, multimodal sensing, and the evolving benchmarks that will shape next-generation intelligent vision systems. This work stands as an essential resource for engineers, researchers, and decision-makers seeking both mastery of the present and a roadmap to the future of object detection.
"YOLO Object Detection Explained" offers a comprehensive and accessible journey through the landscape of modern object detection, illuminating the path from its classical foundations to the cutting-edge innovations that define today's real-time vision systems. The book artfully traces the evolution of detection techniques, contrasting the architectural shifts from traditional handcrafted methods to sophisticated deep learning models like YOLO, SSD, and R-CNN, while contextualizing these advancements within real-world applications and benchmark-driven progress. Through this historical and technical narrative, readers gain not only a deep understanding of the field but also an appreciation for the performance breakthroughs that have made real-time object perception possible.
Central to the book is an in-depth exploration of the YOLO architecture itself-its unified, end-to-end philosophy, grid-based prediction mechanisms, and continuous refinement across successive versions. With clarity and rigor, the text guides practitioners through the entire YOLO lifecycle, from preparing augmented datasets and configuring models, to mastering advanced training strategies and overcoming deployment challenges across diverse hardware and edge environments. Specialized chapters tackle optimization, postprocessing, quantization, robustness, and production-scale serving, equipping the reader with practical insights for building and maintaining high-performance detection pipelines.
Beyond the core technology, "YOLO Object Detection Explained" addresses the nuanced realities of customizing YOLO for advanced and ethical applications. The book examines scenario-specific adaptations-ranging from healthcare and agriculture to autonomous vehicles and smart cities-while delving into the vital topics of adversarial security, bias mitigation, privacy, and explainability. It concludes with a forward-looking perspective on the future of object detection, surveying hybrid approaches, continual and federated learning, multimodal sensing, and the evolving benchmarks that will shape next-generation intelligent vision systems. This work stands as an essential resource for engineers, researchers, and decision-makers seeking both mastery of the present and a roadmap to the future of object detection.
Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in A, B, BG, CY, CZ, D, DK, EW, E, FIN, F, GR, H, IRL, I, LT, L, LR, M, NL, PL, P, R, S, SLO, SK ausgeliefert werden.