Urban sound classification using Deep Learning
-
Updated
Sep 12, 2022 - Jupyter Notebook
Content-Length: 455308 | pFad | http://github.com/topics/urban-sound-classification
01Urban sound classification using Deep Learning
Classification of Urban Sound Audio Dataset using LSTM-based model.
Urban sound source tagging from an aggregation of four second noisy audio clips via 1D and 2D CNN (Xception)
Sound Classification using Neural Networks
Sound classification on Urban Sound Dataset
Spectrogram for UrbanSound8K audio dataset
Set of 1D CNN models to classify sound clips from the Urban Sound Classification dataset using Keras and Librosa
Urban Sound Challenge project
Classification of urban sounds such as air conditioner, jackhammer, drilling, siren, street music, engine idling and children playing by using Mel-frequency Cepstral Coefficients (MFCCs) as audio feature and CNN algorithm.
consist of python scripts, having various models for urban sound classification on UrbanSound8K dataset based on http://aqibsaeed.github.io/2016-09-03-urban-sound-classification-part-1/
Classifying Sounds
Waveplot for UrbanSound8K audio dataset
Web app for urban sound classification
A deep learning classifier for urban sounds using the EfficientNet network
My Urban Sound Challenge classification
In this project, I implemented Convolutional Neural Networks on images of melspectrogram of sound files.
The goal of this project is to obtain a classifier that can automatically classify environmental sounds according to their category. This can be implemented on both transport vehicles and wearable devices to improve road safety.
Urban Sound Classification
[SCH졸업논문] 위급한 상황의 소리를 딥러닝으로 인식하여 알려줍니다
Urban Sounds Classification - Koç Holding Deep Learning Bootcamp by GlobalAIHub
Add a description, image, and links to the urban-sound-classification topic page so that developers can more easily learn about it.
To associate your repository with the urban-sound-classification topic, visit your repo's landing page and select "manage topics."
Fetched URL: http://github.com/topics/urban-sound-classification
Alternative Proxies: