Startseite Mathematik Nutrition Food Recognition Using Deep Learning Algorithm for Physically Challenged Human Being
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Nutrition Food Recognition Using Deep Learning Algorithm for Physically Challenged Human Being

  • A. Reethika , T Jagadesh und M S Kanivarshini
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Abstract

Deep learning just surpassed the advancement in the process of food image identification. Nutrient, a novel deep learning architecture and a classification solution of image pixel classification of healthy or unhealthy food, is described in this research. This work is mainly focused for physically challenged people of their food consumption. Some people cannot be able to know whether the food is good to their health or not; hence, we proposed a method to recognize the food in a proper way. The new framework was made to approximate nutrition of the food at the image level using food-pics dataset that contains nutrient images. Convolutional neural networks, a deep learning approach that has been used successfully in image recognition and classification tasks, have been trained with nutrition image training data, and a high classification success value has been achieved. The arithmetic average nutritional values of the five highest predicted nutritional results obtained from the net were taken as the approximate nutrient content. These help to recognize the nutrition of food by the physically challenged people by themselves without any help of others.

Abstract

Deep learning just surpassed the advancement in the process of food image identification. Nutrient, a novel deep learning architecture and a classification solution of image pixel classification of healthy or unhealthy food, is described in this research. This work is mainly focused for physically challenged people of their food consumption. Some people cannot be able to know whether the food is good to their health or not; hence, we proposed a method to recognize the food in a proper way. The new framework was made to approximate nutrition of the food at the image level using food-pics dataset that contains nutrient images. Convolutional neural networks, a deep learning approach that has been used successfully in image recognition and classification tasks, have been trained with nutrition image training data, and a high classification success value has been achieved. The arithmetic average nutritional values of the five highest predicted nutritional results obtained from the net were taken as the approximate nutrient content. These help to recognize the nutrition of food by the physically challenged people by themselves without any help of others.

Heruntergeladen am 7.10.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783110750584-007/html
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