This is the UNOFFICIAL implementation of the ICCV 2019 paper 'Exploiting Temporal Consistency for Real-Time Video Depth Estimation'.
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Updated
May 17, 2021 - Python
This is the UNOFFICIAL implementation of the ICCV 2019 paper 'Exploiting Temporal Consistency for Real-Time Video Depth Estimation'.
Automated stock trading strategy using deep reinforcement learning and recurrent neural networks
Speech Emotion Recognition (SER) using Deep neural networks CNN and RNN
This repository contains a reimplementation of the C-LSTM model and compares it with textblob and spacy.
Spatiotemporal Depth Estimation using Monocular Cameras using Kitty Dataset.
his is a Speech Emotion Recognition system that classifies emotions from speech samples using deep learning models. The project uses four datasets: CREMAD, RAVDESS, SAVEE, and TESS. The model achieves an accuracy of 96% by combining CNN, LSTM, and CLSTM architectures, along with data augmentation techniques and feature extraction methods.
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