A Novel Approach of Animal Skin Classification Using CNN Model with CLAHE and SUCK Method Support

Abdul Haris Rangkuti, Varyl Athala Hasbi
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Abstract

This study describes the process of classifying animal skin images which are rather difficult to obtain optimal image characteristics. For this reason, in the pre-processing stage, we propose two methods to support feature extraction: sharpening using a convolutional kernel (SUCK-Sharpening) and adaptive histogram equalization with limited contrast (CLAHE-Equalized). SUCK works by operating on these pixel values using direct math to build a new image; this final value is the new value of the current pixel. CLAHE overcomes the limitations of the global approach by performing local contrast enhancement. Because of the advantages of the two methods, it becomes a solution to get features processed at the feature extraction and classification stage. The process of animal skin imagery has characteristics in terms of shape and texture, including the characteristics of animal skin color. In this study, some experiments have been carried out on several CNN models, with an average classification accuracy of more than 70% using the sharpened and equalized methods on six animal skins. More detail, the average classification accuracy using 3 CNN models supported by two methods, namely Sharpening and Equalize on the CNN Resnet 50V2 model is 67.73% and 73.78%, InceptionV3 model at 82.13%, and 74.76% and Densenet121 models were 87.64% and 87.46 %. This research can be continued to improve the accuracy of other animal skin images, including determining fake or genuine skin images.
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基于clhe和SUCK方法支持的CNN模型动物皮肤分类新方法
本研究描述了对动物皮肤图像进行分类的过程,该过程很难获得最优的图像特征。出于这个原因,在预处理阶段,我们提出了两种方法来支持特征提取:使用卷积核锐化(吮吮锐化)和有限对比度的自适应直方图均衡化(clahe -均衡化)。吮吸的工作原理是使用直接的数学运算来操作这些像素值来构建一个新的图像;这个最终值是当前像素的新值。CLAHE通过局部对比度增强克服了全局方法的局限性。由于两种方法的优点,在特征提取和分类阶段对特征进行处理成为一种解决方案。动物皮肤意象的过程具有形状和纹理的特征,包括动物皮肤颜色的特征。本研究在几个CNN模型上进行了一些实验,在6种动物皮肤上使用锐化和均衡方法,平均分类准确率超过70%。更详细地说,在CNN Resnet 50V2模型上,Sharpening和Equalize两种方法支持的3个CNN模型的平均分类准确率分别为67.73%和73.78%,InceptionV3模型为82.13%,74.76%和Densenet121模型分别为87.64%和87.46%。这项研究可以继续提高其他动物皮肤图像的准确性,包括确定假或真皮肤图像。
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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