04774nam 22007455 450 991101563090332120250702130232.0981-9645-58-110.1007/978-981-96-4558-9(MiAaPQ)EBC32189513(Au-PeEL)EBL32189513(CKB)39567920000041(OCoLC)1526862286(DE-He213)978-981-96-4558-9(EXLCZ)993956792000004120250702d2025 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierVisual Object Tracking An Evaluation Perspective /by Xin Zhao, Shiyu Hu, Xu-Cheng Yin1st ed. 2025.Singapore :Springer Nature Singapore :Imprint: Springer,2025.1 online resource (224 pages)Advances in Computer Vision and Pattern Recognition,2191-6594981-9645-57-3 Task Introduction -- Experimental Environment -- Algorithms -- Humans -- Machine-to-Machine Comparisons -- Visual Turing Test: Machine-to-Machine Comparisons -- More Human-like Task Design -- More Realistic Data Environment -- More Human-like Executors -- More Intelligent Evaluation.This book delves into visual object tracking (VOT), a fundamental aspect of computer vision crucial for replicating human dynamic vision, with applications ranging from self-driving vehicles to surveillance systems. Despite significant strides propelled by deep learning, challenges such as target deformation and motion persist, exposing a disparity between cutting-edge VOT systems and human performance. This observation underscores the necessity to thoroughly scrutinize and enhance evaluation methodologies within VOT research. Hence, the primary objective of this book is to equip readers with essential insights into dynamic visual tasks encapsulated by VOT. Beginning with the elucidation of task definitions, it integrates interdisciplinary perspectives on evaluation techniques. The book is organized into five parts, tracing the evolution of VOT from perceptual to cognitive intelligence, exploring the experimental frameworks utilized in assessments, analyzing the various agents involved, including tracking algorithms and human visual tracking, and dissecting evaluation mechanisms through both machine–machine and human–machine comparisons. Furthermore, it examines the trend toward crafting more human-like task definitions and comprehensive evaluation frameworks to effectively gauge machine intelligence. This book serves as a roadmap for researchers aiming to grasp the bottlenecks in VOT capabilities and comprehend the gaps between current methodologies and human abilities, all geared toward advancing algorithmic intelligence. It also delves into the realm of data-centric AI, emphasizing the pivotal role of high-quality datasets and evaluation systems in the age of large language models (LLMs). Such systems are indispensable for training AI models while ensuring their safety and reliability. Utilizing VOT as a case study, the book offers detailed insights into these facets of data-centric AI research. Designed to cater to readers with foundational knowledge in computer vision, it employs diagrams and examples to facilitate comprehension, providing essential groundwork for understanding key technical components.Advances in Computer Vision and Pattern Recognition,2191-6594Computer visionImage processingArtificial intelligenceMachine learningArtificial intelligenceData processingElectronic digital computersEvaluationComputer VisionImage ProcessingArtificial IntelligenceMachine LearningData ScienceSystem Performance and EvaluationComputer vision.Image processing.Artificial intelligence.Machine learning.Artificial intelligenceData processing.Electronic digital computersEvaluation.Computer Vision.Image Processing.Artificial Intelligence.Machine Learning.Data Science.System Performance and Evaluation.006.37Zhao Xin1287691Hu Shiyu1833353Yin Xu-Cheng1735032MiAaPQMiAaPQMiAaPQBOOK9911015630903321Visual Object Tracking4408292UNINA