基于支持向量机的鲁棒头颅测量地标识别

S. Chakrabartty, M. Yagi, T. Shibata, G. Cauwenberghs
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引用次数: 18

摘要

提出了一种鲁棒、准确的头颅标记图像识别方法。该识别器使用Gini支持向量机(SVM)对不同地标之间和背景帧之间的区分边界进行建模。使用非线性核的大边缘分类允许从地标中提取相关细节,接近人类专家的识别水平。结合投影主边缘分布(ped)表示作为特征向量,GiniSVM能够在合理的位置容差值范围内证明医学脑电图上的地标检测准确率超过95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust cephalometric landmark identification using support vector machines
A robust and accurate image recognizer for cephalometric landmarking is presented. The recognizer uses Gini support vector machine (SVM) to model discrimination boundaries between different landmarks and also between the background frames. Large margin classification with non-linear kernels allows to extract relevant details from the landmarks, approaching human expert levels of recognition. In conjunction with projected principal-edge distribution (PPED) representation as feature vectors, GiniSVM is able to demonstrate more than 95% accuracy for landmark detection on medical cephalograms within a reasonable location tolerance value.
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