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Recognition and Classification of Fast Food Images

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Figure

Fig. 3: Contrast enhancement using histogram  equalization
Fig. 5: Sample images from test data set ii. Extract training features using a pretrained CNN
Fig. 9: Confusion Martix for Barfood 101 image dataset
Fig. 13 represents true detected result of  sample image and shows  an output image for False  Negative predicted result

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