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Zebra crossing segmentation based on depthwise separable convolutions

机译:基于深度可分离卷积的斑马交叉分割

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The research of zebra crossing recognition plays an extremely important role in vehicle detection and blind guidance system. From the experiment, we find a method of zebra crossing detection and recognition based on depthwise separable convolutions. In the coding part, we use depthwise separable convolutions to extract the layer from the trunk model, which has been convolved many times and has certain characteristics. In the decoding part, the PSPNet model is improved, the coding layers with different downsampling generations are used for comparison, and all the extraction layers are stacked to get the prediction results, thus solving the problem of small targets disappearing. Through experimental analysis and data training, the mean intersection over union of zebra crossing segmentation reaches 90.7%, and the average recognition speed is less than 0.1s.
机译:斑马交叉识别的研究在车辆检测和盲指系统中起着极其重要的作用。 从实验中,我们发现基于深度可分离卷积的斑马交叉检测和识别方法。 在编码部分中,我们使用深度可分离的卷积来从中继模型中提取层,这已经多次卷积并具有某些特性。 在解码部分中,PSPNET模型得到改善,使用不同的下采样后几代的编码层进行比较,并且所有提取层都被堆叠以获得预测结果,从而解决小目标消失的问题。 通过实验分析和数据训练,斑马交叉分割联盟的平均交叉口达到90.7%,平均识别速度小于0.1s。

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