基于YOLO的交通场景目标检测系统

Jing Tao, Hongbo Wang, Xinyu Zhang, Xiaoyu Li, Hua-wei Yang
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引用次数: 58

摘要

构建了一种针对交通场景图像的目标检测系统。它快速、准确、坚固。传统的目标检测器首先生成建议。然后提取特征。然后对这些建议执行分类器。但速度慢,精度不理想。YOLO是一种优秀的基于深度学习的目标检测方法,它提供了一个单一的卷积神经网络来定位和分类。YOLO网络的所有全连接层都被替换为一个平均池层,以便重新生成一个新网络。增加边界坐标误差的比例后,对损失函数进行了优化。提出了一种新的目标检测方法OYOLO (Optimized YOLO),其速度是YOLO的1.18倍,精度优于R-CNN等其他基于区域的方法。为了进一步提高准确率,我们在系统中加入了OYOLO和R-FCN的组合。对于夜间具有挑战性的图像,采用直方图均衡化方法进行预处理。在我们的测试集上,mAP得到了6%以上的改进。
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An object detection system based on YOLO in traffic scene
We build an object detection system for images in traffic scene. It is fast, accurate and robust. Traditional object detectors first generate proposals. After that the features are extracted. Then a classifier on these proposals is executed. But the speed is slow and the accuracy is not satisfying. YOLO an excellent object detection approach based on deep learning presents a single convolutional neural network for location and classification. All the fully-connected layers of YOLO's network are replaced with an average pool layer for the purpose of reproducing a new network. The loss function is optimized after the proportion of bounding coordinates error is increased. A new object detection method, OYOLO (Optimized YOLO), is produced, which is 1.18 times faster than YOLO, while outperforming other region-based approaches like R-CNN in accuracy. To improve accuracy further, we add the combination of OYOLO and R-FCN to our system. For challenging images in nights, pre-processing is presented using the histogram equalization approach. We have got more than 6% improvement in mAP on our testing set.
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