Food Classification Machine Learning Model to Classify Food Image
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Updated
Jun 16, 2023 - Jupyter Notebook
Food Classification Machine Learning Model to Classify Food Image
your restaurant information app ! :)
This is a comprehensive application that utilizes advanced machine learning models to estimate the volume of food from images, identify the type of food, and provide a detailed nutritional analysis.
Computer Vision project based on GoogLeNet to classify food from pictures (with a nice mobile web app)
A repository of foods which don't contain seed oils.
This project was created to provide information on how to add and use the pre-trained food classification model through TensorFlow Hub.
Cooking recipe & kitchen inventory management application.
Picpan is a computer vision algorithm that recognizes what dish is on the picture (the user snap a picture of a dish and the algorithm recognizes what it is). The idea is to use this capability to output the recipe (and video tutorial) or suggest vegetarian substitutes.
computer vision system capable of scanning a canteen consumer's food tray at the end of a meal to estimate the amount of leftovers for each type of food.
Android Application to choose/ take image of food and add tags using Clarifai API
Various websites for food projects, and their accompanying data.
An app made using IBM Watson to help the present generation teen to recognise Indian spices pulses and leafy vegetables
Fitness and Diet Tracking Application built for Unscript 2019 Hackathon
Food recognition base on its class and weight
Food Classification app
Recipes for your food. Vegan? Vegetarian? Gluten-Free? Lactose-Free? Filter according to your preference.
This implements training of NU-ResNet from NU-ResNet: Deep Residual Networks for Thai Food Image Recognition
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