Cascade Evolving Network for Vehicle Detection of Highway

Xuan Cai, Huayu Li, Li Wang
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Abstract

In this paper, a novel vehicle detection scheme via Cascade Evolving Network (CEN) is presented, which is designed for our highway vehicle detection dataset captured from super wide-angle lens. The highway images are in multi-scale, and almost all cars are dense and seriously obscured. To handle such obstacles, CEN makes better use of contextual information by proposing and refining the object boxes under different feature representations. Specifically, our framework is embedded as a light-weight cascade network. First a Light-weight Parallel Network (LPN) with a small Intersection Over Union (IOU) is applied for extracting multi-scale feature map. The parallel two networks, Coarse-grained Network (CgN) with a smallest IOU and Fine-grained Network (FgN) with a bit larger IOU produce multi-scale candidate boxes with various settings of prior anchors. The smallest IOU is designed for small objects whose IOU is smaller than large ones. Another two subnetworks refine the vague edges of proposals afterwards with gradual increasing IOU. For maximizing contextual information, three subnetworks connect together. Meanwhile, a new novel feature fusion method, named Grouped Region Proposal Network (GRPN) is adopted. CEN achieves the promising results on our highway vehicle detection dataset. To verify the robustness of the network, an evaluation on the DETRAC benchmark dataset is implemented, and obtain a significant improvement over the baseline model of Faster RCNN by 13.11% for mAP. This shows that the initial boxes can be better refined for both localization and recognition in CEN. Furthermore, Our network achieves 7-11 FPS detection speed on a moderate commercial GPU, which is much more effective than the baseline model.
高速公路车辆检测的级联进化网络
针对超广角镜头下的高速公路车辆检测数据集,提出了一种基于级联进化网络(CEN)的车辆检测方案。高速公路图像是多尺度的,几乎所有的车辆都很密集,遮挡严重。为了处理这些障碍,CEN通过提出和改进不同特征表示下的对象框,更好地利用上下文信息。具体来说,我们的框架是作为轻量级级联网络嵌入的。首先,采用具有小交联的轻量级并行网络(LPN)提取多尺度特征图;具有最小IOU的粗粒度网络(CgN)和具有更大IOU的细粒度网络(FgN)这两个并行网络产生具有不同先验锚点设置的多尺度候选框。最小的借据是为小对象设计的,其借据比大对象小。另外两个子网则通过逐步增加IOU来细化提案的模糊边缘。为了最大化上下文信息,三个子网连接在一起。同时,采用了一种新的特征融合方法——分组区域建议网络(GRPN)。CEN在我们的公路车辆检测数据集上取得了令人满意的结果。为了验证网络的鲁棒性,对DETRAC基准数据集进行了评估,并获得了mAP比Faster RCNN基线模型显著提高13.11%的结果。这表明在CEN中,初始方框可以更好地进行定位和识别。此外,我们的网络在中等商用GPU上实现了7-11 FPS检测速度,比基线模型有效得多。
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