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📄 Abstract
Abstract: Deep learning has become the de facto standard and dominant paradigm in image
analysis tasks, achieving state-of-the-art performance. However, this approach
often results in "black-box" models, whose decision-making processes are
difficult to interpret, raising concerns about reliability in critical
applications. To address this challenge and provide human a method to
understand how AI model process and make decision, the field of xAI has
emerged. This paper surveys four representative approaches in xAI for visual
perception tasks: (i) Saliency Maps, (ii) Concept Bottleneck Models (CBM),
(iii) Prototype-based methods, and (iv) Hybrid approaches. We analyze their
underlying mechanisms, strengths and limitations, as well as evaluation
metrics, thereby providing a comprehensive overview to guide future research
and applications.