Camouflaged Object Detection with Feature Decomposition and Edge Reconstruction

Chunming He, Kai Li, Yachao Zhang, Longxiang Tang, Yulun Zhang, Z. Guo, Xiu Li
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引用次数: 28

Abstract

Camouflaged object detection (COD) aims to address the tough issue of identifying camouflaged objects visually blended into the surrounding backgrounds. COD is a challenging task due to the intrinsic similarity of camouflaged objects with the background, as well as their ambiguous boundaries. Existing approaches to this problem have developed various techniques to mimic the human visual system. Albeit effective in many cases, these methods still struggle when camouflaged objects are so deceptive to the vision system. In this paper, we propose the FEature Decomposition and Edge Reconstruction (FEDER) model for COD. The FEDER model addresses the intrinsic similarity of foreground and background by decomposing the features into different frequency bands using learnable wavelets. It then focuses on the most informative bands to mine subtle cues that differentiate foreground and background. To achieve this, a frequency attention module and a guidance-based feature aggregation module are developed. To combat the ambiguous boundary problem, we propose to learn an auxiliary edge reconstruction task alongside the COD task. We design an ordinary differential equation-inspired edge reconstruction module that generates exact edges. By learning the auxiliary task in conjunction with the COD task, the FEDER model can generate precise prediction maps with accurate object boundaries. Experiments show that our FEDER model significantly outperforms state-of-the-art methods with cheaper computational and memory costs. The code will be available at https://github.com/ChunmingHe/FEDER.
基于特征分解和边缘重建的伪装目标检测
伪装目标检测(COD)旨在解决识别视觉上融入周围背景的伪装目标的难题。由于伪装对象与背景的内在相似性以及它们的模糊边界,COD是一项具有挑战性的任务。解决这个问题的现有方法已经发展出各种技术来模拟人类的视觉系统。尽管在许多情况下有效,但当伪装的物体对视觉系统具有如此大的欺骗性时,这些方法仍然很困难。在本文中,我们提出了COD的特征分解和边缘重建(FEDER)模型。该模型利用可学习的小波将前景和背景的特征分解到不同的频带,从而解决了前景和背景的内在相似性。然后,它将重点放在信息最丰富的波段上,以挖掘区分前景和背景的微妙线索。为此,开发了频率关注模块和基于引导的特征聚合模块。为了解决边界模糊问题,我们提出在COD任务的基础上学习一种辅助边缘重建任务。我们设计了一个常微分方程启发的边缘重建模块,可以生成精确的边缘。通过结合COD任务学习辅助任务,FEDER模型可以生成具有精确目标边界的精确预测图。实验表明,我们的FEDER模型在计算和内存成本更低的情况下明显优于最先进的方法。代码可在https://github.com/ChunmingHe/FEDER上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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