Multi-level local feature classification for bleeding detection in Wireless Capsule Endoscopy images

Chee Khun Poh, That Mon Htwe, Liyuan Li, Weijia Shen, Jiang Liu, Joo-Hwee Lim, K. Chan, Ping Chun. Tan
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引用次数: 33

Abstract

This paper presents a novel multi-level approach for bleeding detection in Wireless Capsule Endoscopy (WCE) images. In the low-level processing, each cell of K×K pixels is characterized by an adaptive color histogram which optimizes the information representation for WCE images. A Neural Network (NN) cell-classifier is trained to classify cells in an image as bleeding or non-bleeding patches. In the intermediate-level processing, a block which covers 3×3 cells is formed. The intermediate-level representation of the block is generated from the low-level classifications of the cells, which captures the spatial local correlations of the cell classifications. Again, a NN block-classifier is trained to classify the blocks as bleeding or non-bleeding ones. In the high-level processing, the low-level cell-based and intermediate-level block-based classifications are fused for final detection. In this way, our approach can combine the low-level features from pixels and intermediate-level features from local regions to achieve robust bleeding detection. Experiments on real WCE videos have shown that the proposed method of multi-level classification is not only accurate in both detection and localization of potential bleedings in WCE images but also robust to complex local noisy features.
无线胶囊内窥镜图像出血检测的多级局部特征分类
本文提出了一种无线胶囊内窥镜(WCE)图像出血的多层次检测方法。在低级处理中,K×K像素的每个单元都具有自适应的颜色直方图特征,优化了WCE图像的信息表示。训练神经网络(NN)细胞分类器将图像中的细胞分类为出血斑块或非出血斑块。在中级处理中,形成一个覆盖3×3单元的块。块的中级表示是由细胞的低级分类生成的,它捕获细胞分类的空间局部相关性。同样,训练NN块分类器将块分类为出血或非出血块。在高级处理中,将低级的基于细胞的分类和中级的基于块的分类融合在一起进行最终检测。这样,我们的方法可以结合来自像素的低级特征和来自局部区域的中级特征来实现鲁棒的出血检测。在真实WCE视频上的实验表明,本文提出的多级分类方法不仅对WCE图像中潜在出血的检测和定位准确,而且对复杂的局部噪声特征具有鲁棒性。
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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