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Sum-Fusion and Cascaded Interpolation for Semantic Image Segmentation

机译:用于语义图像分割的求和融合和级联插值

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Semantic image segmentation classifies every pixel in an image into categories but it is difficult for a model to be good at extracting features of every category for segmentation. As features in a model may be excel at classifying a specific class, combining different models may yield a better throughput, but it necessitates heavy parameter tuning. We propose to compromise to combine several convolutional layers of different kernel sizes to get more detailed information. In our proposed algorithm, we preserve the original structure of fully convolution network but replace the convolution layer after the last Pooling layer with four convolution layers of different kernel sizes to extract multi-scale information and then four sets of feature maps obtained after the four layers are element-wise sum-fused to one set followed with convolution operation. We also propose to employ cascaded interpolation for deconvolution to get score maps as large as the corresponding input image. We evaluate our algorithm on SIFTFLOW dataset, and we really improve the segmentation accuracy.
机译:语义图像分割将图像中的每个像素划分为类别,但是模型很难善于提取每个类别的特征以进行分割。由于模型中的特征可能擅长对特定类进行分类,因此组合不同的模型可能会产生更好的吞吐量,但是需要进行大量参数调整。我们建议折衷以组合几个不同内核大小的卷积层,以获取更多详细信息。在我们提出的算法中,我们保留了全卷积网络的原始结构,但将最后一个池化层之后的卷积层替换为四个具有不同内核大小的卷积层,以提取多尺度信息,然后在这四个层之后获得四组特征图逐个元素地求和到一组,然后进行卷积运算。我们还建议采用级联插值进行反卷积,以获得与对应输入图像一样大的得分图。我们在SIFTFLOW数据集上评估了我们的算法,并确实提高了分割精度。

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