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An Improved Image Semantic Segmentation Method Based on Superpixels and Conditional Random Fields

机译:基于超像素和条件随机场的改进的图像语义分割方法

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This paper proposed an improved image semantic segmentation method based on superpixels and conditional random fields (CRFs). The proposed method can take full advantage of the superpixel edge information and the constraint relationship among different pixels. First, we employ fully convolutional networks (FCN) to obtain pixel-level semantic features and utilize simple linear iterative clustering (SLIC) to generate superpixel-level region information, respectively. Then, the segmentation results of image boundaries are optimized by the fusion of the obtained pixel-level and superpixel-level results. Finally, we make full use of the color and position information of pixels to further improve the semantic segmentation accuracy using the pixel-level prediction capability of CRFs. In summary, this improved method has advantages both in terms of excellent feature extraction capability and good boundary adherence. Experimental results on both the PASCAL VOC 2012 dataset and the Cityscapes dataset show that the proposed method can achieve significant improvement of segmentation accuracy in comparison with the traditional FCN model.
机译:提出了一种改进的基于超像素和条件随机场(CRF)的图像语义分割方法。该方法可以充分利用超像素边缘信息和不同像素之间的约束关系。首先,我们采用全卷积网络(FCN)获得像素级语义特征,并利用简单线性迭代聚类(SLIC)分别生成超像素级区域信息。然后,通过融合所获得的像素级和超像素级结果来优化图像边界的分割结果。最后,我们充分利用像素的颜色和位置信息,利用CRF的像素级预测能力进一步提高语义分割的准确性。总而言之,这种改进的方法在出色的特征提取能力和良好的边界附着性方面均具有优势。在PASCAL VOC 2012数据集和Cityscapes数据集上的实验结果表明,与传统的FCN模型相比,该方法可以显着提高分割精度。

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