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Object detection algorithm based on improved Yolov3-tiny network in traffic scenes

机译:基于交通场景中改进的Yolov3-Tiny网络的对象检测算法

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The object detection based on deep learning is an important application in the field of vehicle environment perception, which has been a hot topic in recent years. We propose a novel improved Yolov3-tiny to implement more accurate object detection for the objects in traffic scenes. We employ K-means algorithm to cluster the common objects in traffic scenes to obtain a suitable size and numbers of anchor box. In addition, we modify modifying detection scale and the backbone network structure of Yolov3-tiny, improving the detection accuracy for small object. The stereo vision is also introduced to improve the accuracy of boundary location. Experiments results demonstrate that the improved yolo-tiny has higher accuracy than the original algorithm and it also meet the requirement of real-time performance.
机译:基于深度学习的对象检测是车辆环境感知领域的重要应用,近年来是一个热门话题。我们提出了一种新颖的改进的YOLOV3-TINY,为交通场景中的对象实施更准确的对象检测。我们采用K-Means算法将交通场景中的常见对象群体群集以获得合适的锚箱数量和数量。此外,我们修改了修改检测规模和Yolov3-Tiny的骨干网络结构,提高了小物体的检测精度。还介绍了立体声愿景以提高边界地点的准确性。实验结果表明,改进的yolo-tiny具有比原始算法更高的精度,并且还满足了实时性能的要求。

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