基于语义描述的视频监控人员检索

Parshwa Shah, Arpit Garg, Vandit Gajjar
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引用次数: 4

摘要

一个人的特征通常用年龄、性别、身高、布料类型、图案、颜色等描述词来描述。这样的描述符被称为属性和/或软生物识别。他们将视频监控中人物描述和检索之间的语义差距联系起来。利用语义描述查询检索特定的人在视频监控中有着重要的应用。利用计算机视觉来完全自动化人的检索任务已经引起了研究界的兴趣。然而,目前的趋势主要集中在使用基于图像的查询检索人员,这在实际使用中有很大的局限性。本文研究了基于语义描述的视频监控人员检索问题,而不是使用图像查询。为了解决这个问题,我们开发了一种基于深度学习的级联过滤方法(PeR-ViS),该方法使用Mask R-CNN[14](人检测和实例分割)和DenseNet-161[16](软生物识别分类)。在SoftBioSearch[6]的标准人物检索数据集上,我们实现了0.566的平均IoU和0.792的平均IoU > 0.4,大大超过了目前的水平。我们希望我们的简单、可重复、有效的方法将有助于简化视频监控中人员检索领域的未来研究。源代码将在论文接受基线和预训练权重后发布。源代码和预训练的权重可在https://parshwa1999.github.io/PeR-ViS/。
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PeR-ViS: Person Retrieval in Video Surveillance using Semantic Description
A person is usually characterized by descriptors like age, gender, height, cloth type, pattern, color, etc. Such descriptors are known as attributes and/or soft-biometrics. They link the semantic gap between a person’s description and retrieval in video surveillance. Retrieving a specific person with the query of semantic description has an important application in video surveillance. Using computer vision to fully automate the person retrieval task has been gathering interest within the research community. However, the Current, trend mainly focuses on retrieving persons with image-based queries, which have major limitations for practical usage. Instead of using an image query, in this paper, we study the problem of person retrieval in video surveillance with a semantic description. To solve this problem, we develop a deep learning-based cascade filtering approach (PeR-ViS), which uses Mask R-CNN [14] (person detection and instance segmentation) and DenseNet-161 [16] (soft-biometric classification). On the standard person retrieval dataset of SoftBioSearch [6], we achieve 0.566 Average IoU and 0.792 %w IoU > 0.4, surpassing the current state-of-the-art by a large margin. We hope our simple, reproducible, and effective approach will help ease future research in the domain of person retrieval in video surveillance. The source code will be released after the paper is accepted for publication with base-line and pretrained weights. The source code and pre-trained weights available at https://parshwa1999.github.io/PeR-ViS/.
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