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Border-Oriented Post-Processing Refinement on Detected Vehicle Bounding Box for ADAS

机译:针对ADAS的检测到的车辆边界框的面向边界的后处理优化

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We investigate a new approach for improving localization accuracy of detected vehicles for object detection in advanced driver assistance systems(ADAS). Specifically, we implement a bounding box refinement as a post-processing of the state-of-the-art object detectors (Faster R-CNN, YOLOv2, etc.). The bounding box refinement is achieved by individually adjusting each border of the detected bounding box to its target location using a regression method. We use HOG features which perform well on the edge detection of vehicles to train the regressor and the regressor is independent of the CNN-based object detectors. Experiment results on the KITTI 2012 benchmark show that we can achieve up to 6% improvements over YOLOv2 and Faster R-CNN object detectors on the IoU threshold of 0.8. Also, the proposed refinement framework is computationally light, allowing for processing one bounding box within a few milliseconds on CPU. Further, this refinement method can be added to any object detectors, especially those with high speed but less accuracy.
机译:我们研究一种新方法,用于提高用于高级驾驶员辅助系统(ADAS)中对象检测的被检测车辆的定位精度。具体来说,我们将边界框优化实现为最新对象检测器(Faster R-CNN,YOLOv2等)的后处理。通过使用回归方法将检测到的边界框的每个边界分别调整到其目标位置,可以实现边界框的细化。我们使用HOG功能,该功能在车辆的边缘检测上表现良好,可训练回归器,并且回归器独立于基于CNN的对象检测器。在KITTI 2012基准测试上的实验结果表明,与YOLOv2和Faster R-CNN对象检测器相比,在IoU阈值为0.8的情况下,我们最多可以提高6%。而且,所提出的改进框架在计算上很轻,允许在几毫秒内在CPU上处理一个边界框。此外,可以将这种改进方法添加到任何物体检测器中,尤其是那些具有高速但精度较低的物体检测器。

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