SAM is a segmentation model recently released by Meta AI Research and has been gaining attention quickly due to its impressive performance in generic object segmentation. However, its ability to generalize to specific scenes such as camouflaged scenes is still unknown. Camouflaged object detection (COD) involves identifying objects that are seamlessly integrated into their surroundings and has numerous practical applications in fields such as medicine, art, and agriculture. In this study, we try to ask if SAM can address the COD task and evaluate the performance of SAM on the COD benchmark by employing maximum segmentation evaluation and camouflage location evaluation. We also compare SAM's performance with 22 state-of-the-art COD methods. Our results indicate that while SAM shows promise in generic object segmentation, its performance on the COD task is limited. This presents an opportunity for further research to explore how to build a stronger SAM that may address the COD task. The results of this paper are provided in \url{https://github.com/luckybird1994/SAMCOD}.
翻译:SAM是Meta AI Research最近发布的分割模型,由于其在通用目标分割中的卓越性能,受到了快速关注。然而,它在泛化到特定场景(如伪装场景)方面的能力仍然未知。伪装目标检测(COD)涉及识别与周围环境无缝融合的物体,在医学、艺术和农业等领域有多种实际应用。在本研究中,我们尝试询问SAM是否能够解决COD任务,并通过采用最大分割评估和伪装位置评估来评估SAM在COD基准上的性能。同时,我们还将SAM的表现与22种最先进的COD方法进行了比较。我们的结果表明,虽然SAM在通用目标分割方面表现出很大的潜力,但它在COD任务上的性能有限。这为进一步研究提供了机会,探索如何构建更强大的SAM,以解决COD任务。本论文的结果提供在\url{https://github.com/luckybird1994/SAMCOD}中。