School of Electrical and Electronic Engineering, Nanyang Technological University, 639798, Singapore.
School of Information and Electronics, Beijing Institute of Technology, Beijing, 100081, PR China.
Comput Biol Med. 2018 May 1;96:128-140. doi: 10.1016/j.compbiomed.2018.03.005. Epub 2018 Mar 12.
Automated biomedical image classification could confront the challenges of high level noise, image blur, illumination variation and complicated geometric correspondence among various categorical biomedical patterns in practice. To handle these challenges, we propose a cascade method consisting of two stages for biomedical image classification. At stage 1, we propose a confidence score based classification rule with a reject option for a preliminary decision using the support vector machine (SVM). The testing images going through stage 1 are separated into two groups based on their confidence scores. Those testing images with sufficiently high confidence scores are classified at stage 1 while the others with low confidence scores are rejected and fed to stage 2. At stage 2, the rejected images from stage 1 are first processed by a subspace analysis technique called eigenfeature regularization and extraction (ERE), and then classified by another SVM trained in the transformed subspace learned by ERE. At both stages, images are represented based on two types of local features, i.e., SIFT and SURF, respectively. They are encoded using various bag-of-words (BoW) models to handle biomedical patterns with and without geometric correspondence, respectively. Extensive experiments are implemented to evaluate the proposed method on three benchmark real-world biomedical image datasets. The proposed method significantly outperforms several competing state-of-the-art methods in terms of classification accuracy.
自动化生物医学图像分类在实际应用中可能会遇到高水平噪声、图像模糊、光照变化以及各种分类生物医学模式之间复杂的几何对应等挑战。为了应对这些挑战,我们提出了一种由两个阶段组成的级联方法,用于生物医学图像分类。在第 1 阶段,我们提出了一种基于置信度得分的分类规则,该规则具有使用支持向量机 (SVM) 进行初步决策的拒绝选项。通过第 1 阶段的测试图像根据其置信度得分分为两组。那些置信度得分足够高的测试图像在第 1 阶段进行分类,而那些置信度得分低的图像则被拒绝并输入到第 2 阶段。在第 2 阶段,第 1 阶段的拒绝图像首先由称为特征正则化和提取 (ERE) 的子空间分析技术进行处理,然后由在 ERE 学习的变换子空间中训练的另一个 SVM 进行分类。在两个阶段中,图像分别基于两种类型的局部特征,即 SIFT 和 SURF 进行表示。它们分别使用各种词袋 (BoW) 模型进行编码,以分别处理具有和不具有几何对应关系的生物医学模式。在三个基准真实生物医学图像数据集上进行了广泛的实验,以评估所提出方法的性能。所提出的方法在分类精度方面明显优于几种竞争的最先进方法。