Arnita Arnita, F. Marpaung, Z. A. Koemadji, M. Hidayat, Azi Widianto, Fitrahuda Aulia
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The image data for each type of food was repeated 100 times to produce a total of 3500 images.. Using the color, shape, and texture information, the food image is retrieved. The hue, saturation, and value (HSV) extraction method for color features, the Canny extraction method for shape features, and the gray level co-occurrence matrix (GLCM) method for texture features, in that sequence, were used to evaluate the data in addition to the CNN classification method.Result:The simulation results show that the classification model’s accuracy and precision are 76% and 78%, respectively, when the CNN approach is used alone without the extraction method. The CNN classification model and HSV color extraction yielded an accuracy and precision of 51% and 55%, respectively. The CNN classification model with the Canny texture extraction method has an accuracy and precision of 20% and 20%, respectively, while the combined CNN and GLCM extraction methods have 67% and 69% success rates, respectively. According to the simulation results, the food classification and identification model that uses the CNN approach without the HSV, Canny, and GLCM feature extraction methods produces better results in terms of accuracy and precision model.Novelty: This research has the potential to be used in a variety of food identification applications, such as food and nutrition service systems, as well as to improve product quality in the food and beverage industry.","PeriodicalId":30781,"journal":{"name":"Scientific Journal of Informatics","volume":" ","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-05-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Selection of Food Identification System Features Using Convolutional Neural Network (CNN) Method\",\"authors\":\"Arnita Arnita, F. Marpaung, Z. A. Koemadji, M. 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The image data for each type of food was repeated 100 times to produce a total of 3500 images.. Using the color, shape, and texture information, the food image is retrieved. The hue, saturation, and value (HSV) extraction method for color features, the Canny extraction method for shape features, and the gray level co-occurrence matrix (GLCM) method for texture features, in that sequence, were used to evaluate the data in addition to the CNN classification method.Result:The simulation results show that the classification model’s accuracy and precision are 76% and 78%, respectively, when the CNN approach is used alone without the extraction method. The CNN classification model and HSV color extraction yielded an accuracy and precision of 51% and 55%, respectively. The CNN classification model with the Canny texture extraction method has an accuracy and precision of 20% and 20%, respectively, while the combined CNN and GLCM extraction methods have 67% and 69% success rates, respectively. 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引用次数: 0
摘要
目的:食品的鉴别和选择对决定人类生活的健康质量至关重要。我们的饮食和我们患的疾病是密切相关的。由于肥胖、心脏病、2型糖尿病、高血压和癌症等退行性疾病的发病率不断上升,公众对食品质量重要性的认识有所提高。本研究旨在建立一个食品识别模型,并确定可以帮助食品识别的方面。方法:本研究采用卷积神经网络(CNN)方法,根据检测到的特征对食物物体或图像进行识别。研究人员收集了35种不同类型的传统食品、加工食品和西方食品的图像,作为研究的输入数据。每种食物的图像数据重复100次,共生成3500张图像。使用颜色、形状和纹理信息检索食物图像。除CNN分类方法外,依次使用颜色特征的hue, saturation, and value (HSV)提取方法,形状特征的Canny提取方法,纹理特征的灰度共生矩阵(GLCM)方法对数据进行评价。结果:仿真结果表明,在不使用提取方法的情况下,单独使用CNN方法时,分类模型的准确率为76%,精密度为78%。CNN分类模型和HSV颜色提取的准确率和精密度分别为51%和55%。Canny纹理提取方法的CNN分类模型的准确率和精密度分别为20%和20%,而CNN和GLCM联合提取方法的成功率分别为67%和69%。从仿真结果来看,使用CNN方法的食品分类识别模型,在不使用HSV、Canny和GLCM特征提取方法的情况下,在准确率和模型精密度方面都取得了更好的结果。新颖性:这项研究有潜力用于各种食品识别应用,如食品和营养服务系统,以及提高食品和饮料行业的产品质量。
Selection of Food Identification System Features Using Convolutional Neural Network (CNN) Method
Purpose: The identification and selection of food to be consumed are critical in determining the health quality of human life. Our diet and the illnesses we develop are closely linked. Public awareness of the significance of food quality has increased due to the rising prevalence of degenerative diseases such as obesity, heart disease, type 2 diabetes, hypertension, and cancer. This study aims to develop a model for food identification and identify aspects that can aid in food identification.Methods : This study employs the convolutional neural network (CNN) approach, which is used to identify food objects or images based on the detected features. The images of thirty-five different types of traditional, processed, and western foods were gathered as the study’s input data. The image data for each type of food was repeated 100 times to produce a total of 3500 images.. Using the color, shape, and texture information, the food image is retrieved. The hue, saturation, and value (HSV) extraction method for color features, the Canny extraction method for shape features, and the gray level co-occurrence matrix (GLCM) method for texture features, in that sequence, were used to evaluate the data in addition to the CNN classification method.Result:The simulation results show that the classification model’s accuracy and precision are 76% and 78%, respectively, when the CNN approach is used alone without the extraction method. The CNN classification model and HSV color extraction yielded an accuracy and precision of 51% and 55%, respectively. The CNN classification model with the Canny texture extraction method has an accuracy and precision of 20% and 20%, respectively, while the combined CNN and GLCM extraction methods have 67% and 69% success rates, respectively. According to the simulation results, the food classification and identification model that uses the CNN approach without the HSV, Canny, and GLCM feature extraction methods produces better results in terms of accuracy and precision model.Novelty: This research has the potential to be used in a variety of food identification applications, such as food and nutrition service systems, as well as to improve product quality in the food and beverage industry.