A Survey of Camouflaged Object Detection and Beyond
Fengyang Xiao, Sujie Hu, Yuqi Shen, Chengyu Fang, Jinfa Huang,, Chunming He, Longxiang Tang, Ziyun Yang, Xiu Li

TL;DR
This comprehensive survey reviews recent advancements in Camouflaged Object Detection (COD), covering theoretical foundations, practical methods, benchmarks, and future research directions in both image and video domains.
Contribution
It provides the most extensive review to date of COD, integrating traditional and deep learning approaches, and explores extended tasks like instance segmentation and counting.
Findings
Deep learning methods outperform traditional approaches in COD.
Benchmark evaluations reveal current models' limitations and strengths.
Future directions include addressing inherent challenges and exploring novel technologies.
Abstract
Camouflaged Object Detection (COD) refers to the task of identifying and segmenting objects that blend seamlessly into their surroundings, posing a significant challenge for computer vision systems. In recent years, COD has garnered widespread attention due to its potential applications in surveillance, wildlife conservation, autonomous systems, and more. While several surveys on COD exist, they often have limitations in terms of the number and scope of papers covered, particularly regarding the rapid advancements made in the field since mid-2023. To address this void, we present the most comprehensive review of COD to date, encompassing both theoretical frameworks and practical contributions to the field. This paper explores various COD methods across four domains, including both image-level and video-level solutions, from the perspectives of traditional and deep learning approaches.…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Image Enhancement Techniques
MethodsSoftmax · Attention Is All You Need
