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   people's fatness and thinness detection using image processing and machine learning  
   
نویسنده mosapour ahmad ,mohammadi johendizi adel ,mirzaee mohammad ,hasanvand mohamad
منبع اكتشاف و پردازش هوشمند دانش - 1402 - دوره : 3 - شماره : 8 - صفحه:68 -79
چکیده    One of the most important priorities in developed countries is the use of machine decision-making instead of a human. one of the areas that need this field is health. for this purpose, determining the obesity and thinness of people can be very useful in studying and examining the health status of a society and adopting health system policies. images of people as a database of research have been prepared from several different environments where the distance between the camera and the person is the same in all of them. then, the background of the image is removed using background subtraction. image features that include image morphological characteristics are extracted from the image and are classified into two categories to perform classification operations. the people were divided into three categories: fat, medium, and thin. the images are noised using the gaussian low pass filter method with different frequencies filtered using two methods of salt and pepper noise and gaussian noise. n normal images, the highest accuracy is related to the support vector machine method with an accuracy of 91.7%the results of this paper showed that with the proposed method, in addition to being able to classify the people of a society in terms of obesity and thinness, a higher accuracy was achieved than most of the methods that have been presented so far. according to the solutions and results of this research, by increasing the images of people, in addition to increasing the accuracy, it will reach a more practical level.
کلیدواژه classification ,image processing ,machine learning ,svm ,thin ,fat
آدرس islamic azad university north tehran branch, faculty of electrical engineering, iran, islamic azad university north tehran branch, faculty of electrical engineering, iran, islamic azad university north tehran branch, faculty of electrical engineering, iran, university of mohagegh ardebili, faculty of computer engineering, iran
پست الکترونیکی mohamadhasanvand5691@gmail.com
 
   people's fatness and thinness detection using image processing and machine learning  
   
Authors mosapour ahmad ,mohammadi johendizi adel ,mirzaee mohammad ,hasanvand mohamad
Abstract    one of the most important priorities in developed countries is the use of machine decision-making instead of a human. one of the areas that need this field is health. for this purpose, determining the obesity and thinness of people can be very useful in studying and examining the health status of a society and adopting health system policies. images of people as a database of research have been prepared from several different environments where the distance between the camera and the person is the same in all of them. then, the background of the image is removed using background subtraction. image features that include image morphological characteristics are extracted from the image and are classified into two categories to perform classification operations. the people were divided into three categories: fat, medium, and thin. the images are noised using the gaussian low pass filter method with different frequencies filtered using two methods of salt and pepper noise and gaussian noise. n normal images, the highest accuracy is related to the support vector machine method with an accuracy of 91.7%the results of this paper showed that with the proposed method, in addition to being able to classify the people of a society in terms of obesity and thinness, a higher accuracy was achieved than most of the methods that have been presented so far. according to the solutions and results of this research, by increasing the images of people, in addition to increasing the accuracy, it will reach a more practical level.
Keywords classification ,image processing ,machine learning ,svm ,thin ,fat
 
 

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