Tensorflow implementation of "Compounding the Performance Improvements of Assembled Techniques in a Convolutional Neural Network"
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Updated
Jan 25, 2021 - Python
Tensorflow implementation of "Compounding the Performance Improvements of Assembled Techniques in a Convolutional Neural Network"
A system that takes food images as an input, recognizes the food automatically and gives the nutritional-facts as an output.
Multimodal Learning Method MLA for CVPR 2024
Building a model for predicting food images using the famous FOOD-101 dataset.
training food-101 (achieved SOTA top-1 validation acc ~=90%) using 1-cycle-policy:
Vision Transformer Based Food-101 Classification
This repo contains implementations of the challenges from fellowship.ai. For more, visit here.
Food classification on Food-101 dataset with optimization of training with TF Profiler, transfer learning, fine-tuning, intelligibility
Web application using Streamlit and Keras to predict food class.
Training a Deep neural network with torch- Application on food recognition
Using Keras models and datasets to build custom prediction models
Fine-tuning a MobileNet model on the Food-101 dataset. Involves experimenting with different techniques for optimal performance, and features a Flask web application for real-time inference.
classifying the food101 dataset using cnn
Example application for training Microsofts's pretrained BEiT image transformer model on a new image classification task
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