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End-to-End Chained Pedestrian Multi-Object Tracking Based on Multi-Feature Fusion

机译:基于多特征融合的端到端链式的行人多对象跟踪

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An end-to-end chained network with multi-feature fusion is proposed for the trade-off of tracking speed and accuracy, which integrates target detection, feature extraction and data association into a framework. It chains paired bounding boxes estimated from overlapping nodes by IOU (Intersection Over Union) matching, whose each node covers two adjacent frames. Besides, the bidirectional feature pyramid that includes two aggregation paths is presented for multi-feature fusion, in which deformable convolution V2 is applied. Decreasing sample imbalance and gradient contribution difference, focal loss and BalancedL1 Loss form multi-task learning loss. The results on MOT17 dataset indicate that the model achieve superior tracking speed (21.6FPS) and accuracy (69.6MOTA, 81.0MOTP).
机译:提出了一种具有多种融合的端到端链式网络,用于跟踪速度和准确性的权衡,将目标检测,特征提取和数据关联集成到框架中。 它链接由IOO(联盟交叉路口)匹配的重叠节点估计的配对边界框,其每个节点覆盖两个相邻帧。 此外,包括两个聚合路径的双向特征金字塔用于多个特征融合,其中施加可变形卷积V2。 降低样本不平衡和渐变贡献差异,焦点损失和BalanceL1损失形成多任务学习损失。 MOT17数据集上的结果表明该模型实现了卓越的跟踪速度(21.6FPS)和准确性(69.6MOTA,81.0motp)。

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