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Chicken Meat Freshness Identification using Colors and Textures Feature

机译:利用颜色和纹理特征识别鸡肉新鲜度

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摘要

This research proposed the identification of chicken freshness level based on its color and texture features. Color Features used are the RGB (Red, Green, and Blue) and HSV (Hue, Saturation, Value) channel histogram value. texture features used are GLCM (Grey Level Co-Occurrence Matrix), Gabor kernel, and HOG (Histogram of Oriented Gradients). The freshness level of a chicken meat is categorized into three labels, fresh (0-4 hours after slaughtered), medium-fresh (4-6 hours after slaughtered), and not-fresh (more than 6 hours after slaughtered). The experiments will identify the freshness using several classification methods and different camera resolution and magnification. The highest classification accuracy using SVM (Support Vector Machines) achieves 58,33% with a smartphone camera, 98% with a webcam camera, and 79.1% with a 200 magnification digital microscope. From the experiment results, we can conclude that using webcam camera with normal resolution have better classification accuracy compared with a 200 magnification digital microscope or standard smartphone camera. It is also shown that SVM is superior compared with other methods tested in this experiments which are Decision Tree and Naive Bayes.
机译:这项研究提出了根据鸡肉的颜色和质地特征来确定鸡肉新鲜度的方法。使用的颜色功能是RGB(红色,绿色和蓝色)和HSV(色相,饱和度,值)通道直方图值。使用的纹理特征是GLCM(灰度共生矩阵),Gabor核和HOG(定向直方图)。鸡肉的新鲜度分为三个标签:新鲜(屠宰后0-4小时),中鲜(屠宰后4-6小时)和不新鲜(屠宰后6小时以上)。实验将使用几种分类方法以及不同的相机分辨率和放大倍率来识别新鲜度。使用SVM(支持向量机)的最高分类精度在智能手机相机中达到58.33%,在网络摄像头中达到98%,在200倍数码显微镜下达到79.1%。从实验结果可以得出结论,与200倍数码显微镜或标准智能手机相机相比,使用普通分辨率的网络相机具有更好的分类精度。还表明,与本实验中测试的其他方法(决策树和朴素贝叶斯)相比,SVM更具优势。

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