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Person Retrieval in Surveillance Video using Height, Color and Gender

机译:使用高度,颜色和性别的监控视频中检索人员

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A person is commonly described by attributes like height, build, cloth color, cloth type, and gender. Such attributes are known as soft biometrics. They bridge the semantic gap between human description and person retrieval in surveillance video. The paper proposes a deep learning-based linear filtering approach for person retrieval using height, cloth color, and gender. The proposed approach uses Mask R-CNN for pixel-wise person segmentation. It removes background clutter and provides precise boundary around the person. Color and gender models are fine-tuned using AlexNet and the algorithm is tested on SoftBioSearch dataset. It achieves good accuracy for person retrieval using the semantic query in challenging conditions.
机译:一个人通常由像高度,构建,布颜色,布型和性别一样的属性描述。这种属性称为软生物识别性。他们在监控视频中弥合人类描述与人物检索之间的语义差距。本文提出了一种基于深度学习的线性滤波方法,用于使用高度,布料和性别来检索人员。所提出的方法使用掩模R-CNN用于像素 - 明智的人分割。它消除了背景杂乱,并在该人周围提供精确的边界。使用AlexNet进行微调和性别模型,并且在SoftBiosearch数据集中测试算法。使用语义查询在具有挑战性的条件下,可以实现人员检索的良好准确性。

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