Vision-based chicken meat freshness recognition system using RGB color moment features and support vector machine

S. Sutarman, Donny Avianto, Adityo Permana Wibowo
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Abstract

Chicken meat is a highly sought-after food product among various segments of the general population, known for its high nutritional value and easy accessibility. Presently, meat identification is primarily conducted manually, relying on visual inspection or tactile assessment of the meat's color and texture. However, this approach presents several limitations, particularly when consumers lack the discernment to differentiate the quality of chicken meat freshness. This research aims to identify the freshness level of chicken meat using the Support Vector Machine method, employing the extraction of RGB color moment features to determine the freshness of the meat. The feature extraction process involves calculating the percentage of intensity values for R (Red), G (Green), and B (Blue) in each chicken meat image. Based on the image processing results, the percentage of intensity values, particularly in the R and B parameters, can be used as determining factors. The study involves software testing using fresh and non-fresh chicken meat. The developed system can identify the freshness level of fresh chicken meat with an accuracy rate of 71.6% using the linear kernel SVM and 60.5% using the RBF kernel SVM.  This research represents a significant step toward the automation of chicken meat freshness assessment, potentially reducing food waste and enhancing food safety in the food industry. Further research and development could improve the system's accuracy and expand its applications in various food quality control settings.Chicken meat is a highly sought-after food product among various segments of the general population, known for its high nutritional value and easy accessibility. Presently, meat identification is primarily conducted manually, relying on visual inspection or tactile assessment of the meat's color and texture. However, this approach presents several limitations, particularly when consumers lack the discernment to differentiate the quality of chicken meat freshness. This research aims to identify the freshness level of chicken meat using the Support Vector Machine method, employing the extraction of RGB color moment features to determine the freshness of the meat. The feature extraction process involves calculating the percentage of intensity values for R (Red), G (Green), and B (Blue) in each chicken meat image. Based on the image processing results, the percentage of intensity values, particularly in the R and B parameters, can be used as determining factors. The study involves software testing using fresh and non-fresh chicken meat. The developed system can identify the freshness level of fresh chicken meat with an accuracy rate of 71.6% using the linear kernel SVM and 60.5% using the RBF kernel SVM.  This research represents a significant step toward the automation of chicken meat freshness assessment, potentially reducing food waste and enhancing food safety in the food industry. Further research and development could improve the system's accuracy and expand its applications in various food quality control settings.
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使用 RGB 色矩特征和支持向量机的基于视觉的鸡肉新鲜度识别系统
鸡肉因其营养价值高、易于获取而成为各阶层人群争相购买的食品。目前,肉类鉴别主要依靠人工,通过目测或触觉评估肉的颜色和质地。然而,这种方法存在一些局限性,尤其是当消费者缺乏辨别鸡肉新鲜度质量的能力时。本研究旨在利用支持向量机方法识别鸡肉的新鲜程度,并通过提取 RGB 色矩特征来判断肉的新鲜程度。特征提取过程包括计算每张鸡肉图像中 R(红色)、G(绿色)和 B(蓝色)强度值的百分比。根据图像处理结果,强度值的百分比,特别是 R 和 B 参数,可用作决定因素。研究涉及使用新鲜和不新鲜鸡肉进行软件测试。所开发的系统可识别新鲜鸡肉的新鲜程度,使用线性核 SVM 的准确率为 71.6%,使用 RBF 核 SVM 的准确率为 60.5%。 这项研究向鸡肉新鲜度评估自动化迈出了重要一步,有可能减少食品浪费,提高食品行业的食品安全。进一步的研究和开发可以提高系统的准确性,并扩大其在各种食品质量控制环境中的应用。鸡肉因其营养价值高、易于获取而成为各阶层人群追捧的食品。目前,肉类识别主要依靠人工进行,即通过目测或触觉评估肉的颜色和质地。然而,这种方法存在一些局限性,尤其是当消费者缺乏辨别鸡肉新鲜度质量的能力时。本研究旨在利用支持向量机方法识别鸡肉的新鲜程度,并通过提取 RGB 色矩特征来判断肉的新鲜程度。特征提取过程包括计算每张鸡肉图像中 R(红色)、G(绿色)和 B(蓝色)强度值的百分比。根据图像处理结果,强度值的百分比,特别是 R 和 B 参数,可用作决定因素。研究涉及使用新鲜和不新鲜鸡肉进行软件测试。所开发的系统可识别新鲜鸡肉的新鲜程度,使用线性核 SVM 的准确率为 71.6%,使用 RBF 核 SVM 的准确率为 60.5%。 这项研究向鸡肉新鲜度评估自动化迈出了重要一步,有可能减少食品浪费,提高食品行业的食品安全。进一步的研究和开发可以提高系统的准确性,并扩大其在各种食品质量控制环境中的应用。
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