Image Segmentation Based on Deep Learning Features

D. Liao, Hu Lu, Xingpei Xu, Quansheng Gao
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引用次数: 6

Abstract

Image segmentation is an important technique in image analysis. Existing methods in image segmentation rely on an artificial neural network to extract the feature of the image. In this study, we propose an image segmentation method based on deep learning features and community detection. We propose the use of a pre-trained convolution neural network (CNN) to extract the deep learning features of the image. The deep CNN is trained on ImageNet dataset and transferred to image segmentations for constructing potentials of super-pixels. We first convert the original image from the pixel level to the region level based on Simple Linear Iterative Clustering super-pixels and then aim at each superpixel region to extract the deep learning features. We combine the color features and deep learning features of the superpixel region. The weights of deep learning features and color features are subsequently adjusted using a random walk algorithm to construct a new similarity matrix. We conduct community detection based on a similarity matrix. To automatically identify the number of image segmentation, we use modularity Q in order to determine the optimal number of associations. To illustrate the effectiveness of our proposed method, we evaluate the BSDS300 dataset and compare the technique with several other wellknown image segmentation methods. The segmentation experiments conducted on different images show that our proposed image segmentation algorithm outperforms other methods.
基于深度学习特征的图像分割
图像分割是图像分析中的一项重要技术。现有的图像分割方法依赖于人工神经网络提取图像的特征。在本研究中,我们提出了一种基于深度学习特征和社区检测的图像分割方法。我们建议使用预训练的卷积神经网络(CNN)来提取图像的深度学习特征。在ImageNet数据集上训练深度CNN,并将其转移到图像分割中以构建超像素的势。我们首先基于简单线性迭代聚类超像素将原始图像从像素级转换为区域级,然后针对每个超像素区域提取深度学习特征。我们将超像素区域的颜色特征和深度学习特征结合起来。随后使用随机游走算法调整深度学习特征和颜色特征的权重,构建新的相似矩阵。我们基于相似矩阵进行社区检测。为了自动识别图像分割的数量,我们使用模块化Q来确定最佳的关联数量。为了说明我们提出的方法的有效性,我们评估了BSDS300数据集,并将该技术与其他几种知名的图像分割方法进行了比较。对不同图像进行的分割实验表明,本文提出的图像分割算法优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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