基于共同表征净化的共显著目标检测

Zhu, Ziyue, Zhang, Zhao, Lin, Zheng, Sun, Xing, Cheng, Ming-Ming
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引用次数: 0

摘要

共同显著目标检测(Co-SOD)旨在发现一组相关图像中的共同目标。挖掘共同表示对于定位共同突出对象至关重要。遗憾的是,目前的Co-SOD方法没有给予足够的重视,将与共显着对象无关的信息包含在共同表示中。这种不相关的信息干扰了共同表征对共同突出对象的定位。本文提出了一种搜索无噪声共表示的协同表示净化(Co-Representation Purification, CoRP)方法。我们搜索一些可能属于共显著区域的像素级嵌入。这些嵌入构成了我们的共同表征,并指导我们的预测。为了获得更纯粹的共表示,我们使用预测来迭代地减少我们的共表示中的不相关嵌入。在三个数据集上的实验表明,我们的公司在基准数据集上取得了最先进的性能。我们的源代码可从https://github.com/ZZY816/CoRP获得。
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Co-Salient Object Detection with Co-Representation Purification
Co-salient object detection (Co-SOD) aims at discovering the common objects in a group of relevant images. Mining a co-representation is essential for locating co-salient objects. Unfortunately, the current Co-SOD method does not pay enough attention that the information not related to the co-salient object is included in the co-representation. Such irrelevant information in the co-representation interferes with its locating of co-salient objects. In this paper, we propose a Co-Representation Purification (CoRP) method aiming at searching noise-free co-representation. We search a few pixel-wise embeddings probably belonging to co-salient regions. These embeddings constitute our co-representation and guide our prediction. For obtaining purer co-representation, we use the prediction to iteratively reduce irrelevant embeddings in our co-representation. Experiments on three datasets demonstrate that our CoRP achieves state-of-the-art performances on the benchmark datasets. Our source code is available at https://github.com/ZZY816/CoRP.
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