Bing Lu, Wang Wei
School of Information and Computer Science, Shanghai Business School, Shanghai 201400, China.
Department of Science and Technology, Shanghai Municipal Public Security Bureau, Shanghai 200042, China.
Comput Math Methods Med. 2017;2017:7894705. doi: 10.1155/2017/7894705. Epub 2017 May 25.
We propose a novel method based on sparse representation for breast ultrasound image classification under the framework of multi-instance learning (MIL). After image enhancement and segmentation, concentric circle is used to extract the global and local features for improving the accuracy in diagnosis and prediction. The classification problem of ultrasound image is converted to sparse representation based MIL problem. Each instance of a bag is represented as a sparse linear combination of all basis vectors in the dictionary, and then the bag is represented by one feature vector which is obtained via sparse representations of all instances within the bag. The sparse and MIL problem is further converted to a conventional learning problem that is solved by relevance vector machine (RVM). Results of single classifiers are combined to be used for classification. Experimental results on the breast cancer datasets demonstrate the superiority of the proposed method in terms of classification accuracy as compared with state-of-the-art MIL methods.
我们提出了一种基于稀疏表示的新颖方法,用于在多实例学习(MIL)框架下进行乳腺超声图像分类。在图像增强和分割之后,使用同心圆来提取全局和局部特征,以提高诊断和预测的准确性。超声图像的分类问题被转换为基于稀疏表示的MIL问题。一个包中的每个实例都表示为字典中所有基向量的稀疏线性组合,然后该包由一个特征向量表示,该特征向量是通过对包内所有实例进行稀疏表示而获得的。稀疏和MIL问题进一步转换为一个由相关向量机(RVM)解决的传统学习问题。将单个分类器的结果组合起来用于分类。在乳腺癌数据集上的实验结果表明,与现有最先进的MIL方法相比,所提出的方法在分类准确性方面具有优越性。