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A Joint Sparse and Correlation Induced Subspace Clustering Method for Segmentation of Natural Images

机译:用于分割自然图像的关节稀疏和相关性诱导的子空间聚类方法

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Due to the presence of diverse and disparate patterns, the segmentation of natural images endures crucial as well as a challenging problem in image analysis algorithms. The proposed method addresses image segmentation as a subspace clustering of image feature vectors. Initially, an image is partitioned into superpixels and further, a feature data matrix is computed using the Local Spectral Histogram (LSH) features from individual superpixels. A single-stage optimization model is formulated which incorporates better subspace selection, excellent grouping effect and simultaneous noise robustness for the uncorrelated, correlated and corrupted data by the conjunctive venture of l1, l2 and l2,1 norm minimization. The proposed model is solved using Augmented Lagrangian technique. We compared the proposed method with state-of-the-art methods and the results demonstrate the improved performance of our proposed model over the existing counterparts.
机译:由于存在多样化和不同的模式,自然图像的分割持续至关重要以及图像分析算法中的具有挑战性问题。所提出的方法将图像分段解决了图像特征向量的子空间聚类。最初,将图像划分为超像素,并且进一步地,使用来自各个超像素的本地光谱直方图(LSH)特征来计算特征数据矩阵。制定了单级优化模型,该模型包含更好的子空间选择,优异的分组效果以及L的不相关性和损坏数据的同时噪声稳健性。 1 ,L. 2 和我 2,1 常态最小化。使用增强拉格朗日技术解决了所提出的模型。我们将提出的方法与最先进的方法进行了比较,结果证明了我们提出的模型对现有对应物的提高性能。

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