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A deep person re-identification model with multi visual-semantic information embedding

机译:具有多视觉语义信息嵌入的深层重新识别模型

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摘要

The local features of different body parts have been widely used to learn more discriminative representation for person re-identification, which act as either extra visual semantic information or auxiliary means to deal with the issue of misalignment and background bias. However, the existing person re-identification works mainly focuses on the common impact of multiple body parts while failing to explicitly explore the influence of body edge contour. As the edge contour is one of the most significant visual-semantic clues for object detection and person identification in the blurred scene, this paper intentionally explores the effect of edge contour clues on person re-identification and proposes a deep learning framework with multi visual-semantic information embedding, including body parts and edge contour. Meanwhile, we conceive a practical strategy which can effectively fuse the different body part features and reduce the dimensionality of features. Extensive experimental results on four benchmark data sets show that our model has achieved competitive accuracy compared to the state-of-the-art models.
机译:不同的身体部位的本地特征已被广泛用于了解更多的人重新识别的歧视性表示,这是额外的视觉语义信息或辅助手段来处理未对准和背景偏见的问题。然而,现有的人重新识别作品主要关注多个身体部位的共同影响,同时未明确探索身体边缘轮廓的影响。由于边缘轮廓是模糊场景中的物体检测和人物识别最重要的视觉语义线索之一,本文故意探讨边缘轮廓线索对人重新识别的影响,并提出了一种与多视觉的深度学习框架语义信息嵌入,包括身体部位和边缘轮廓。同时,我们构思了一种实用的策略,可以有效地融合不同的身体部位特征并降低特征的维度。四个基准数据集的广泛实验结果表明,与最先进的模型相比,我们的模型实现了竞争精度。

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