Convmelspec: Convertible Melspectrograms via 1D Convolutions
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Updated
May 13, 2024 - Python
Convmelspec: Convertible Melspectrograms via 1D Convolutions
Easier audio-based machine learning with TensorFlow.
A neural network framework for researchers studying acoustic communication
Environmental sound classification with Convolutional neural networks and the UrbanSound8K dataset.
Deep learning using CNN for Mandarin Chinese tone classification
NTU RGB+D Dataset Action Recognition with GNNs and CNNs
Find gravitational wave signals from binary black hole collisions.
Using deep learning techniques like 1D and 2D CNNs, LSTM to detect damage in a structure with hinges/joints after an earthquake.
Music timbre transfer
Classifying Radio signal coming from space
Tackle accent classification and conversion using audio data, leveraging MFCCs and spectrograms. Models differentiate accents and convert audio between accents
NoiseCapture 2 Multi Platform
Code and material relevant to the paper "Spectrogrand: Computational Creativity Driven Audiovisuals' Generation From Text Prompts"
TinyML project. This system monitors your room or surrounding with an onboard microphone of Arduino nano BLE sense. Still Under Developement
A Python script that transforms images into audio
Analysis of human behavioral and neural variability during naturalistic arm movements. Replicates the findings in our preprint: https://www.biorxiv.org/content/10.1101/2020.04.17.047357v2
Data Preprocessing and Exploratory Data Analysis project, CNN model
LOFAR System Health Management
Speaker Verification utilizing the Self-Supervised Audio Spectrogram Transformer
Build a Neural Network to identify and classify emotion Real-time Emotion Detection using the tone of their voice. Restrictive to English language (American accent)
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