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DEEP CROSS-CORRELATION LEARNING FOR OBJECT TRACKING

机译:深度互相关学习以进行对象跟踪

摘要

An artificial neural network for learning to track a target across a sequence of frames includes a representation network configured to extract a target region representation from a first frame and a search region representation from a subsequent frame. The artificial neural network also includes a cross-correlation layer configured to convolve the extracted target region representation with the extracted search region representation to determine a cross-correlation map. The artificial neural network further includes a loss layer configured to compare the cross-correlation map with a ground truth cross-correlation map to determine a loss value and to back propagate the loss value into the artificial neural network to update filter weights of the artificial neural network.
机译:用于学习跨一系列帧跟踪目标的人工神经网络包括表示网络,该表示网络配置为从第一帧提取目标区域表示,并从后续帧提取搜索区域表示。人工神经网络还包括互相关层,该互相关层被配置为将所提取的目标区域表示与所提取的搜索区域表示进行卷积以确定互相关图。人工神经网络还包括损失层,该损失层被配置为将互相关图与地面真互相关图进行比较以确定损失值,并将损失值反向传播到人工神经网络中以更新人工神经的滤波器权重。网络。

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