Real-time Detection and Tracking Network with Feature Sharing

Ente Guo, Z. Chen, Zhenjia Fan, Xiujun Yang
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引用次数: 0

Abstract

Multiple object tracking (MOT) systems can benefit many applications, such as autonomous driving, action recognition, and surveillance. State-of-the-art methods detect objects in an image and then use a representation model to connect these objects with existing trajectories. However, the combination of these two components to reduce computation has received minimal attention. In this study, we propose a single-shot network for simultaneously detecting objects and extracting tracking features to achieve a real-time MOT system. We also present a detection–tracking coupled method that uses temporal information to improve the accuracy of object detection and make trajectories complete. Experimentation on the KITTI driving dataset indicates that our scheme achieves an accurate and fast MOT system. In particular, the lightweight network reaches a running speed of 100 FPS.
特征共享的实时检测与跟踪网络
多目标跟踪(MOT)系统可以使许多应用受益,例如自动驾驶、动作识别和监视。最先进的方法检测图像中的物体,然后使用表征模型将这些物体与现有的轨迹连接起来。然而,结合这两个组件来减少计算很少受到关注。在本研究中,我们提出了一种单镜头网络,用于同时检测目标并提取跟踪特征,以实现实时MOT系统。我们还提出了一种利用时间信息提高目标检测精度并使轨迹完整的检测-跟踪耦合方法。在KITTI驾驶数据集上的实验表明,我们的方案实现了一个准确、快速的MOT系统。其中,轻量级网络的运行速度达到100fps。
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