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Detection of dish waste degree based on image processing and convolutional neural networks

机译:基于图像处理和卷积神经网络的皿料浪费度检测

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摘要

Abstract Many restaurants have a certain amount of food waste. The monitoring of food waste will help restaurants to eliminate some dishes with outrageous waste and reduce waste from the source. In view of this, this research proposed a method to detect waste of dishes through image processing and deep learning technology. According to the remaining quantity of the dishes, the collected dish images were preliminarily divided into six levels, which were used as sample labels, and then the image of the uneaten dishes and the image of the dishes after eating were stacked as the input of the network. Trained in the InceptionV3, Xception, and ResNet18 network models, we find that compared with the single image data as the input, the effect of stacking the two images data as the input was better. The accuracy of sample label recognition increased by 6.97%, 5.81%, and 4.1% respectively. Further analysis discovered that the sample that predicted wrong on the test set data, its true label, and the predicted wrong label were adjacent. Therefore, with the help of the probability vector output by the trained network model, the definition method of the level of dish waste degree and its corresponding accuracy metric standard was further given. Finally, the recognition accuracy of the best network structure InceptionV3 on the test set data can reach 98.47%.
机译:抽象的许多餐馆都有一定数量的食物浪费。帮助消除一些菜餐馆无耻的浪费和减少浪费源。方法通过图像检测浪费菜处理和深度学习技术。剩下的数量菜,收集到的图像初步分为六层,作为样品标签,然后的形象剩下的盘子和碗后的形象吃被堆叠为网络的输入。训练有素的InceptionV3 Xception,ResNet18网络模型,我们发现比较与单一图像数据作为输入两图像数据的叠加效果输入是更好。识别增加了6.97%、5.81%和4.1%分别。在测试集样本预测错了数据,它真正的标签,预测错了标签是相邻的。概率向量输出训练网络模型,定义方法的水平菜的浪费程度和其相应的进一步给出了精度度量标准。最后,最好的识别精度网络结构InceptionV3测试集数据可以达到98.47%。

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