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首页> 外文期刊>Journal of electronic imaging >Data association framework based on biconnected gated recurrent unit network for multiple object tracking
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Data association framework based on biconnected gated recurrent unit network for multiple object tracking

机译:基于双对象跟踪的BiConnected Gated Rovertent单元网络的数据关联框架

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摘要

In the tracking-by-detection scheme of multiple object tracking (MOT), the data association process in which existing tracking data and new detections are matched over time is very important. A framework is proposed to solve the data association problem in MOT in scenarios where there are potential target interactions and occlusions in crowded environments. This framework consists of an input layer and an association layer. The input layer is an end-to-end feature-map extraction model that incorporates a simplified Siamese convolutional neural network, which effectively distinguishes similar objects based on their appearance and motion. The association layer is composed of a bidirectional gated recurrent unit network with three layers of fully connected networks (FCNs), whose outputs are fed into the FCNs and transformed into an association matrix that reflects the matching scores between the detections and existing tracks. The matrix is then used to minimize the loss of the framework. The experimental results show that the proposed framework demonstrates outstanding performance for MOT, with its accuracy and precision in MOT reaching values as high as 26.1% and 71.2%, respectively. (C) 2020 SPIE and IS&T
机译:在多个对象跟踪(MOT)的逐个检测方案中,随着时间的推移匹配现有的跟踪数据和新检测的数据关联过程非常重要。建议框架在有潜在的目标交互和拥挤环境中的潜在目标交互和闭塞的情况下解决MOT中的数据关联问题。该框架由输入层和关联层组成。输入层是端到端的特征图提取模型,其包含简化的暹罗卷积神经网络,其有效地基于它们的外观和运动来区分类似的物体。关联层由具有三层完全连接的网络(FCN)的双向门控复发单元网络组成,其输出被馈送到FCN中并转换为反映检测和现有轨道之间的匹配分数的关联矩阵。然后使用矩阵来最小化框架的损失。实验结果表明,该框架的概况表明了MOT的出色性能,其精度和精度分别达到26.1%和71.2%。 (c)2020个SPIE和IS&T

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