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Optimization of Joint Detector for Ultrasound Images Using Mixtures of Image Feature Descriptors

机译:利用图像特征描述符混合优化超声图像联合检测器

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Joint detector is an essential part of an approach towards automated assessment of synovitis activity, which is a subject of the current research work. A recent formulation of the joint detector, that integrates image processing, local image neighborhood descriptors, such as SURF, FAST, ORB, BRISK, FREAK, trainable classification (SVM, NN, CART) and clusterization, results in a large number of possible choices of classifiers, their modes, components of features vectors, and parameter values, and making such choices by experimentation is impractical. This article presents a novel approach, and an implemented environment for the parameter selection process for the joint detector, which automatically choses the best configuration of image processing operators, type of image neighborhood descriptors, the form of a classifier and the clustering method and their parameters. Its implementation uses new scripting tools and generic techniques, such as chain-of-responsibility design pattern and metafunction idiom. Also presented are novel results, comparing the effect of feature vectors composed from multiple SURF descriptors on the performance of the joint detector, which demonstrate the potential of mixture of descriptors for improving the classification results.
机译:关节检测器是滑膜炎活动自动评估方法的重要组成部分,这是当前研究工作的主题。联合检测器的最新形式,它集成了图像处理,本地图像邻域描述符(例如SURF,FAST,ORB,BRISK,FREAK),可训练的分类(SVM,NN,CART)和聚类,从而产生了许多可能的选择分类器,它们的模式,特征向量的组成和参数值的分类,并且通过实验做出这样的选择是不切实际的。本文介绍了一种新颖的方法以及联合检测器参数选择过程的实现环境,该环境自动选择图像处理算子的最佳配置,图像邻域描述符的类型,分类器的形式以及聚类方法及其参数。它的实现使用新的脚本工具和通用技术,例如责任链设计模式和元功能惯用法。还提出了新颖的结果,比较了由多个SURF描述符组成的特征向量对联合检测器性能的影响,这表明描述符的混合对于改进分类结果的潜力。

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