Classification and recommendation of food intake in West Africa for healthy diet using Deep Learning

Chigoziem Andrew Iheanacho, O. R. Vincent
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Abstract

A fascinating area with many applications is that of food item recognition from images. Food recognition is becoming more important in our daily lives because it plays a major part in health-related issues. In this study, a method for categorizing food-related photos using convolutional neural networks has been provided. Convolutional neural networks, in contrast to conventional artificial neural networks, are able to estimate the score function directly from picture pixels. A tensor of outputs is generated by a 2D convolution layer's em ployment of a convolution kernel, which is convolved with the l ayer's input. There are numerous such layers, and the results are concatenated in portions to achieve the final tensor of outputs. The data is also processed using the Max-Pooling function, and the features that result from that processing are employed to train the network. The accuracy of the suggested technique again for classes with in FOOD-101 dataset is 85.78 percent.
使用深度学习对西非健康饮食的食物摄入进行分类和推荐
从图像中识别食物是一个有许多应用的迷人领域。食物识别在我们的日常生活中变得越来越重要,因为它在健康问题中起着重要作用。本文提出了一种利用卷积神经网络对食物相关照片进行分类的方法。与传统的人工神经网络相比,卷积神经网络能够直接从图像像素估计分数函数。输出张量是由二维卷积层对卷积核的部署生成的,卷积核与第1层的输入进行卷积。有许多这样的层,并且结果按部分连接起来以实现最终的输出张量。数据也使用Max-Pooling函数进行处理,并使用该处理产生的特征来训练网络。对于FOOD-101数据集中的类,建议的技术的准确率为85.78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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