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Framework for Pedestrian Detection, Tracking and Re-identification in Video Surveillance System

机译:视频监控系统中的行人检测,跟踪和重新识别的框架

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In this work, we present a framework for implementing pedestrian re-identification in real world surveillance camera systems. Pedestrian re-identification has seen a lot of attention as a stand-alone identifier that takes in cropped images of pedestrians and matches their IDs. The focus of this work is to produce the input needed for the re-identifier network form a raw video output from the surveillance cameras. The integrated system utilizes Tensorflow object detection API with a Faster-RCNN pre-trained model, for pedestrian detection, a discriminative correlation filter from [1], for the purpose of short-term tracking of subjects in each camera and a pedestrian re-identification network from [2]. This configuration resulted in an accuracy above 93% on our dataset, that was automatically produced using pedestrian detection and tracking algorithms.
机译:在这项工作中,我们提出了一个实现现实世界监控摄像机系统中的行人重新识别的框架。行人重新识别已经看到了很多关注,作为一个独立的标识符,它采用播种的行人图像并与其ID相匹配。这项工作的焦点是生产重新标识符网络所需的输入,从监视摄像机形成原始视频输出。集成系统利用带有更快的RCNN预训练模型的Tensorflow对象检测API,用于行人检测,从[1]中的鉴别相关滤波器,以便在每个相机和行人重新识别中进行短期跟踪科目的短期跟踪网络从[2]。这种配置在我们的数据集中产生了高于93%的准确性,这是使用行人检测和跟踪算法自动产生的。

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