面向领域自适应目标检测器的RPN原型对齐

Y. Zhang, Zilei Wang, Yushi Mao
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引用次数: 58

摘要

近年来,目标检测技术取得了很大的进展。然而,由于领域转移问题,将目标检测器从一个特定领域学习到的知识应用到另一个特定领域往往会导致严重的性能下降。现有方法大多采用骨干网或实例分类器上的特征对齐来提高目标检测器的可移植性。不同的是,我们提出在RPN阶段进行特征对齐,从而有效区分目标域的前景和背景RPN提议。具体来说,我们首先构建一组可学习的RPN原型,然后强制RPN特征与源和目标领域的原型保持一致。它本质上配合RPN原型和特征的学习,以对齐源和目标RPN特征。特别地,我们提出了一种简单而有效的适合于RPN特征对齐的方法,即利用IoU过滤后的检测结果在目标域中生成高质量的提案伪标签。在此基础上,采用梯度CAM方法在前景图中寻找可分辨区域,提高RPN特征的可分辨性。我们在多个跨域检测场景下进行了广泛的实验,结果表明我们提出的方法与以前最先进的方法相比是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RPN Prototype Alignment For Domain Adaptive Object Detector
Recent years have witnessed great progress of object detection. However, due to the domain shift problem, applying the knowledge of an object detector learned from one specific domain to another one often suffers severe performance degradation. Most existing methods adopt feature alignment either on the backbone network or instance classifier to increase the transferability of object detector. Differently, we propose to perform feature alignment in the RPN stage such that the foreground and background RPN proposals in target domain can be effectively distinguished. Specifically, we first construct one set of learnable RPN prototpyes, and then enforce the RPN features to align with the prototypes for both source and target domains. It essentially cooperates the learning of RPN prototypes and features to align the source and target RPN features. Particularly, we propose a simple yet effective method suitable for RPN feature alignment to generate high-quality pseudo label of proposals in target domain, i.e., using the filtered detection results with IoU. Furthermore, we adopt Grad CAM to find the discriminative region within a foreground proposal and use it to increase the discriminability of RPN features for alignment. We conduct extensive experiments on multiple cross-domain detection scenarios, and the results show the effectiveness of our proposed method against previous state-of-the-art methods.
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