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Fully Convolutional Neural Network Combined with K-means Clustering Algorithm for Image Segmentation

机译:全卷积神经网络与K-means聚类算法相结合的图像分割

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Image segmentation is an important part of many computer vision tasks such as image recognition and image understanding. Traditional image segmentation algorithms are susceptible to the influence of complex backgrounds such as illumination, shading and occlusion, thus the application of convolution neural network to image segmentation becomes a hot spot of current research. But in the process of image convolution, as the convolution goes further, the image will lose some edge information, resulting in the blurring of the final partition edge. To overcome this problem, we propose an image segmentation algorithm combining the fully convolution neural network and K-means clustering algorithm. By conducting pixel matching between the coarse segmentation result obtained by using the convolution neural network and the segmentation results obtained by using K-means, the algorithm enhances the classification of pixels on the edge to improve segmentation accuracy. The proposed algorithm adopts two-stage training method to train and optimize the model. The experimental results on VOC2012 set validate the effectiveness of the proposed method.
机译:图像分割是许多计算机视觉任务(例如图像识别和图像理解)的重要组成部分。传统的图像分割算法易受光照,阴影和遮挡等复杂背景的影响,因此卷积神经网络在图像分割中的应用成为当前研究的热点。但是在图像卷积的过程中,随着卷积的进行进一步,图像将丢失一些边缘信息,从而导致最终分区边缘的模糊。为了克服这个问题,我们提出了一种将全卷积神经网络和K-means聚类算法相结合的图像分割算法。通过在使用卷积神经网络获得的粗略分割结果与使用K均值获得的分割结果之间进行像素匹配,该算法增强了边缘像素的分类,从而提高了分割精度。该算法采用两阶段训练方法对模型进行训练和优化。在VOC2012上的实验结果证明了该方法的有效性。

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