融合GLCM和感兴趣区域几何特征提取的金枪鱼分类方法

Wanvy Arifha Saputra, D. Herumurti
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引用次数: 10

摘要

大眼金枪鱼、鲣鱼和黄鳍金枪鱼的图像具有非常高的颜色相似性,但在纹理和形状上可以区分。需要一种方法对大眼鱼、鲣鱼和黄鳍金枪鱼进行适当的特征提取,使金枪鱼分类结果具有较高的准确率。提出了一种将灰度共生矩阵(GLCM)与感兴趣区域几何特征提取相结合的金枪鱼分类方法。为了测量金枪鱼的纹理,需要在图像中以质心作为中心边界的参数进行区域划分,从而确定金枪鱼的头、身、尾。从而最大限度地得到其提取,并产生准确的分类。实验结果表明,结合GLCM和几何形状特征提取的方法是成功的,对大眼、鲣鱼和黄鳍的图像进行了10倍交叉验证,分类准确率为86.67%,Kappa为0.8%,MAE为0.11%,RMSE为0.28%,RAE为24.71%,RRSE为58.95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration GLCM and geometric feature extraction of region of interest for classifying tuna
Image of tuna as bigeye, skipjack and yellowfin have very high color similarity, but in the texture and shape can be differentiated. It requires a method to perform feature extraction of bigeye, skipjack and yellowfin appropriately, so the results on a classification of tuna have a high accurate rate. We propose a method to integrate gray level co-occurrence matrix (GLCM) and geometric feature extraction of region of interest (ROI) for classifying tuna. To measure the texture of tuna is require making region in an image using centroid as a parameter of center boundary to help determine head, body and tail. Thus, maximally get its extraction and produce an accurate classification. The experiment results show the integration GLCM and geometric shape feature extraction is successful and classify very well the image of bigeye, skipjack and yellowfin with 86.67% accurate, 0.8% Kappa, 0.11% MAE, 0.28% RMSE, 24.71% RAE and 58.95% RRSE using 10-fold cross-validation of the entire dataset.
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