首页> 外文会议>Communications Control and Signal Processing (ISCCSP), 2012 5th International Symposium on >Vocal folds paralysis clasiffication using FLDA and PCA algorithms suported by an adapted block matching algorithm
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Vocal folds paralysis clasiffication using FLDA and PCA algorithms suported by an adapted block matching algorithm

机译:使用LDA和PCA算法进行声带麻痹分类

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摘要

Movement study in vocal folds recordings is basic to detect pathologies related to the movement, and specially the vocal folds paralysis. This approach involves four process steps: 1) a preprocessing stage 2) the analysis of the image textures applying Gabor filtering for the segmentation of the glottal area, 3) an adapted block matching algorithm using the Exhaustive Search method, and 4) classification using FLDA (Fisher's Linear Discriminant Analysis) and PCA (Principal Component Analysis) techniques. The adaptation of the block matching algorithm is made due to the heterogeneous nature of the ROI of each frame of the video sequence. The results show that our proposal works correctly to detect automatically vocal folds with paralysis and to distinguish them from healthy or pathological vocal folds with accuracy over the 95%. There is also shown the classification of the correct pathology over the 65% of the cases.
机译:声带记录中的运动研究是检测与运动有关的病理学的基础,特别是声带麻痹。该方法涉及四个处理步骤:1)预处理阶段2)应用Gabor滤波对声门区域进行分割的图像纹理分析; 3)使用穷举搜索法的自适应块匹配算法,以及4)使用FLDA进行分类(Fisher的线性判别分析)和PCA(主成分分析)技术。由于视频序列的每个帧的ROI的异构性质,因此进行了块匹配算法的自适应。结果表明,我们的建议可以正确地检测出具有麻痹性的自动声带,并将其与健康或病理性声带区分开,准确率超过95%。还显示了在65%的病例中正确病理的分类。

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