用于伪装对象检测的同态统一Nexus拓扑。

IF 13.7
Haolin Ji;Fengying Xie;Linpeng Pan;Yushan Zheng;Zhenwei Shi
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引用次数: 0

摘要

伪装目标检测(COD)对人类和计算机视觉都具有挑战性,因为目标通常通过共享相似的颜色、纹理或形状而融入背景。鉴于被伪装的物体在不同的观察视角下表现出不同的隐藏策略,我们提出了一个网络HUNTNet,它建立了一个动态检测机制,将目标特征与RGB图像解耦,并通过统一的特征聚焦架构在多个同态特征空间中执行拓扑去伪装。我们采用PVTv2作为主干提取多视角空间特征。通过集成双通道递归(DCR)、小波加伯变换(WGT)和各向异性梯度响应(AGR)的特征模块增强了细节表示,这些特征模块共同改进了边界识别和边缘轮廓检测。为了进一步提高性能,简单特征集成(SFI)模块递归融合多层特征,实现对目标区域的高分辨率聚焦。实验表明,HUNTNet在准确率和泛化方面都超过了目前最先进的方法,为COD提供了鲁棒的解决方案,并改善了复杂场景下的分割。我们的代码可在https://github.com/HaolinJi817/HUNTNet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。
HUNTNet: Homomorphic Unified Nexus Topology for Camouflaged Object Detection
Camouflaged object detection (COD) is challenging for both human and computer vision, as targets often blend into the background by sharing similar color, texture, or shape. While many feature enhancement techniques exist, single-view methods tend to overemphasize certain Recognizing that camouflaged objects exhibit different concealment strategies under varying observational perspectives, we propose HUNTNet, a network that establishes a dynamic detection mechanism to decouple target features from RGB images and perform topological decamouflage across multiple homomorphic feature spaces through a unified feature focusing architecture. We adopt PVTv2 as the backbone to extract multi-perspective spatial features. Detail representation is enhanced via a feature module that integrates Dual-Channel Recursive (DCR), Wavelet-Gabor Transform (WGT), and Anisotropic Gradient Responding (AGR), which together improve boundary discrimination and edge contour detection. To further boost performance, the Simplicial Feature Integration (SFI) module recursively fuses multi-layer features, enabling high-resolution focus on target regions. Experiments show that HUNTNet surpasses state-of-the-art methods in both accuracy and generalization, offering a robust solution for COD and improving segmentation in complex scenes. Our code is available at https://github.com/HaolinJi817/HUNTNet
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