论文标题
放大镜:朝着人重新识别的语义对手和融合
MagnifierNet: Towards Semantic Adversary and Fusion for Person Re-identification
论文作者
论文摘要
尽管人们重新识别(REID)最近通过执行零件对准取得了重大改进,但在区分视觉上相似的身份或确定被遮挡的人方面,这仍然是一项艰巨的任务。在这些情况下,在每个部分中放大细节并有选择地将它们融合在一起可以提供可行的解决方案。在这项工作中,我们提出了MagnifierNet,这是一个三个分支网络,可准确地将细节从整体矿山挖掘。首先,整体显着特征由全球分支编码。其次,为了增强每个语义区域的详细表示,“语义对抗分支”旨在在训练过程中从动态生成的语义封闭样品中学习。同时,我们引入了“语义融合分支”,以依次选择性地融合语义区域信息来滤除无关的噪声。为了进一步提高功能多样性,我们引入了一种新颖的损失函数“语义多样性损失”,以消除跨学习的语义表示的冗余重叠。通过很大的利润率,已经在三个基准上实现了最先进的性能。具体而言,在最具挑战性的CUHK03-L和CUHK03-D基准测试中,地图得分提高了6%和5%。
Although person re-identification (ReID) has achieved significant improvement recently by enforcing part alignment, it is still a challenging task when it comes to distinguishing visually similar identities or identifying the occluded person. In these scenarios, magnifying details in each part features and selectively fusing them together may provide a feasible solution. In this work, we propose MagnifierNet, a triple-branch network which accurately mines details from whole to parts. Firstly, the holistic salient features are encoded by a global branch. Secondly, to enhance detailed representation for each semantic region, the "Semantic Adversarial Branch" is designed to learn from dynamically generated semantic-occluded samples during training. Meanwhile, we introduce "Semantic Fusion Branch" to filter out irrelevant noises by selectively fusing semantic region information sequentially. To further improve feature diversity, we introduce a novel loss function "Semantic Diversity Loss" to remove redundant overlaps across learned semantic representations. State-of-the-art performance has been achieved on three benchmarks by large margins. Specifically, the mAP score is improved by 6% and 5% on the most challenging CUHK03-L and CUHK03-D benchmarks.