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Autor principal: Yalçınkaya, Mehmet Ali
Formato: Recurso digital
Idioma:inglês
Publicado em: Zenodo 2026
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Acesso em linha:https://doi.org/10.5281/zenodo.20053633
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author Yalçınkaya, Mehmet Ali
author_facet Yalçınkaya, Mehmet Ali
contents <p>-Updated to new version with corrected co-occurrence interpretation, OOF protocol, and 500 m external validation<br><br>This repository contains the complete source code for the end-to-end urban noise <br>monitoring pipeline described in the manuscript "An End-to-End Deep Learning Pipeline <br>for Urban Noise Monitoring with Spatiotemporal Validation" (under review at Scientific Reports).</p> <p>The pipeline extends from raw data collection (SONYC-UST v2.3 audio + NYC 311 complaint records) <br>through CNN14-based multi-label classification, calibration analysis, TorchScript deployment, <br>spatiotemporal mapping, and external corroboration analysis.</p> <ul> <li>Contents <ul> <li>15 Jupyter notebooks, including the manuscript-reproduction workflow and one legacy data-acquisition notebook retained for transparency</li> <li>README.md with detailed usage instructions, hardware requirements, and reproducibility settings</li> <li>requirements.txt with fully pinned dependency versions</li> </ul> </li> <li>Hardware Tested<br>NVIDIA GeForce RTX 3060 (12 GB VRAM), Python 3.11, PyTorch 2.5.1 with CUDA 12.1.</li> <li>Dataset Access <ul> <li>SONYC-UST v2.3: https://zenodo.org/record/3966543</li> <li>NYC 311 Noise Complaints: NYC Open Data Portal (dataset 76ig-c548)</li> </ul> </li> <li>Citation<br>Please refer to the README.md for citation details. The full manuscript citation <br>will be updated upon publication.</li> <li>License<br>MIT License</li> </ul>
format Recurso digital
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institution Zenodo
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publisher Zenodo
record_format zenodo
spellingShingle An End-to-End Deep Learning Pipeline for Urban Noise Monitoring with Spatiotemporal Validation: Revision 2
Yalçınkaya, Mehmet Ali
urban noise monitoring
audio classification
deep learning
CNN14
PANNs
SONYC-UST
multi-label classification
spatiotemporal analysis
probability calibration
TorchScript
environmental sound
<p>-Updated to new version with corrected co-occurrence interpretation, OOF protocol, and 500 m external validation<br><br>This repository contains the complete source code for the end-to-end urban noise <br>monitoring pipeline described in the manuscript "An End-to-End Deep Learning Pipeline <br>for Urban Noise Monitoring with Spatiotemporal Validation" (under review at Scientific Reports).</p> <p>The pipeline extends from raw data collection (SONYC-UST v2.3 audio + NYC 311 complaint records) <br>through CNN14-based multi-label classification, calibration analysis, TorchScript deployment, <br>spatiotemporal mapping, and external corroboration analysis.</p> <ul> <li>Contents <ul> <li>15 Jupyter notebooks, including the manuscript-reproduction workflow and one legacy data-acquisition notebook retained for transparency</li> <li>README.md with detailed usage instructions, hardware requirements, and reproducibility settings</li> <li>requirements.txt with fully pinned dependency versions</li> </ul> </li> <li>Hardware Tested<br>NVIDIA GeForce RTX 3060 (12 GB VRAM), Python 3.11, PyTorch 2.5.1 with CUDA 12.1.</li> <li>Dataset Access <ul> <li>SONYC-UST v2.3: https://zenodo.org/record/3966543</li> <li>NYC 311 Noise Complaints: NYC Open Data Portal (dataset 76ig-c548)</li> </ul> </li> <li>Citation<br>Please refer to the README.md for citation details. The full manuscript citation <br>will be updated upon publication.</li> <li>License<br>MIT License</li> </ul>
title An End-to-End Deep Learning Pipeline for Urban Noise Monitoring with Spatiotemporal Validation: Revision 2
topic urban noise monitoring
audio classification
deep learning
CNN14
PANNs
SONYC-UST
multi-label classification
spatiotemporal analysis
probability calibration
TorchScript
environmental sound
url https://doi.org/10.5281/zenodo.20053633