香料的深度学习分类与分级

S. Jana, P. Shanmukha Nagasai, K. Saravan Kumar, V. Mani Nageshwar
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引用次数: 0

摘要

基于图像处理的香料检测与识别是一个热门的研究课题。食物是人类生活中最重要的方面。每天食用的每一种食物都含有各种各样的香料,使其美味可口。人们特别关心自己的健康。膳食中使用的香料在预防饮食、肥胖和其他类似问题方面起着至关重要的作用。该项目的目的是创建一个自动系统,用于检测和识别不同图像上的印度香料,以便营养师可以正确分析营养和其他类型的健康危害。为了获得更好的分类结果,在识别方法中主要使用颜色和纹理数据。这种方法已经在各种香料上进行了评估。使用卷积神经网络(CNN)对不同的香料进行分类。该系统采用CNN模型进行分类。香料数据集是通过从互联网上收集图像并使用4个类别的数据增强来创建更多用于训练的图像来生成的。香料图像包含640个作为训练数据和另外128个单独拍摄的图像作为测试数据。为了获得一个分类精度更高的最优模型,分析了不同隐层数和隐时代的组合。还观察了各种情况下的总体网络性能损失。实验结果表明,最佳测试准确率为91.14%,最佳训练准确率为97.19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorization and Grading of Spices Using Deep Learning
Detection of spices from images and recognition based on image processing is a popular research topic. Food is the most vital aspect of human life. Every food consumed on a daily basis contains a variety of spices that make it delicious and flavorful. People are especially concerned about their health. The spices used in meals play a vital role in the prevention of dietary, obesity, and other such issues. The aim of this project is to create an automatic system for detecting and recognising Indian spices on different images, so that dieticians may properly analyze nutrition and other types of health dangers. Color and texture data were primarily used in the recognition method for a better categorization outcome. This approach has been evaluated on a variety of spices. The different spices were classified using a Convolution Neural Network (CNN). The proposed system involves the CNN model for categorization. The spices dataset is generated by collecting images from the internet and creating more images for training by using data augmentation for 4 categories. The spices images contain 640 as training data and another 128 images taken separately for testing data. For obtaining an optimum model with increased classification accuracy different combinations of number of hidden layers and epochs are analyzed. The overall network performance losses for various cases are also observed. Experimental results produced the best test accuracy of 91.14% and the best training accuracy of 97.19%.
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