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Ship detection in optical remote sensing image based on visual saliency and AdaBoost classifier 被引量:10
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作者 王慧利 朱明 +1 位作者 蔺春波 陈典兵 《Optoelectronics Letters》 EI 2017年第2期151-155,共5页
In this paper, firstly, target candidate regions are extracted by combining maximum symmetric surround saliency detection algorithm with a cellular automata dynamic evolution model. Secondly, an eigenvector independen... In this paper, firstly, target candidate regions are extracted by combining maximum symmetric surround saliency detection algorithm with a cellular automata dynamic evolution model. Secondly, an eigenvector independent of the ship target size is constructed by combining the shape feature with ship histogram of oriented gradient(S-HOG) feature, and the target can be recognized by Ada Boost classifier. As demonstrated in our experiments, the proposed method with the detection accuracy of over 96% outperforms the state-of-the-art method. efficiency switch and modulation. 展开更多
关键词 classifier AdaBoost histogram automata symmetric pixel candidate similarity surround segmentation
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Tumor segmentation in lung CT images based on support vector machine and improved level set 被引量:2
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作者 王小鹏 张雯 崔颖 《Optoelectronics Letters》 EI 2015年第5期395-400,共6页
In lung CT images, the edge of a tumor is frequently fuzzy because of the complex relationship between tumors and tissues, especially in cases that the tumor adheres to the chest and lung in the pathology area. This m... In lung CT images, the edge of a tumor is frequently fuzzy because of the complex relationship between tumors and tissues, especially in cases that the tumor adheres to the chest and lung in the pathology area. This makes the tumor segmentation more difficult. In order to segment tumors in lung CT images accurately, a method based on support vector machine(SVM) and improved level set model is proposed. Firstly, the image is divided into several block units; then the texture, gray and shape features of each block are extracted to construct eigenvector and then the SVM classifier is trained to detect suspicious lung lesion areas; finally, the suspicious edge is extracted as the initial contour after optimizing lesion areas, and the complete tumor segmentation can be obtained by level set model modified with morphological gradient. Experimental results show that this method can efficiently and fast segment the tumors from complex lung CT images with higher accuracy. 展开更多
关键词 segmentation classifier contour texture trained morphological pixel finally details deviation
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