EARS: Environmental Audio Recognition System
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Updated
Apr 4, 2018 - Python
EARS: Environmental Audio Recognition System
Classify audio with neural nets on embedded systems like the Raspberry Pi
ConvNets for Audio Recognition using Google Commands Dataset
Implementation of "Slow-Fast Auditory Streams for Audio Recognition, ICASSP, 2021" in PyTorch
SELD-TCN: Sound Event Detection & Localization via Temporal Convolutional Network | Python w/ Tensorflow
Source code of the model used in Tensorflow Speech Recognition Challenge (https://www.kaggle.com/c/tensorflow-speech-recognition-challenge). The solution ranked in top 5% in private leaderboard.
General purpose, real-time audio recognition engine
Flutter mobile application for audio recognition using Tensorflow Lite to integrate the classification model
Google Speech Command Dataset Classification Neural Network, CNN, RNN
📻💡 Recognize audio recordings with node and the acr-cloud recognition API
基于SSM框架的听歌识曲系统
Redis Audio Track Recognition
Audio classification using Keras with ESC-50 dataset.
This code was made in an effort to make it easier to find the song that has been dubbed as 'the most mysterious song on the internet' and it makes it possible to search youtube channels for songs without having to manually check the videos.
Detecting lip popping noises to trigger an action.
Deep learning (also known as deep structured learning or hierarchical learning) is part of a broader family of machine learning methods based on artificial neural networks. Learning can be supervised, semi-supervised or unsupervised. Deep learning architectures such as deep neural networks, deep belief networks, recurrent neural networks and con…
Categorize audio files by genre effortlessly. Use Dockerized environment and API to classify music genres.
Quranic sound recognizer to detect any wrong recitation
Minimalist Speech-to-Text toolkit for educational purposes
Vanilla Music player file Metadata Fetch plugin
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