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# Auto-ACD |
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Auto-ACD is a large-scale, high-quality, audio-language dataset, building on the prior of robust audio-visual correspondence in existing video datasets, VGGSound and AudioSet. |
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- **Homepage:** https://auto-acd.github.io/ |
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- **Paper:** https://huggingface.co/papers/2309.11500 |
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- **Github:** https://github.com/LoieSun/Auto-ACD |
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## Analysis |
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![](src/analysis.png) |
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Auto-ACD</strong>, comprising over <strong>1.9M </strong> audio-text pairs. |
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As shown in figure, The text descriptions in Auto-ACD contain <strong>long texts (18 words)</strong> and <strong>diverse vocabularies (23K)</strong>, and provide information about the <strong>surrounding auditory environment</strong>(data point with <strong>shadow</strong>) in which sounds take place. |
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## Download |
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We provide a csv file. For each data pairs, we provide YouTube URLs and generated caption. Each line in the csv file has columns defined by here. |
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``` |
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# YouTube ID, caption |
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``` |
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## Dataset Preview |
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![](src/samples.png) |
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