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This dataset is designed for training an audio classification model that identifies the type of trash being thrown into a bucket.

The model classifies sounds into the following categories: Metal, Glass, Plastic, Cardboard, and Noise (non-trash-related sounds).

The dataset was recorded and organized as part of an Edge Impulse project to create a system that sorts trash based on sound.

Link to Edge Impulse: https://studio.edgeimpulse.com/public/556872/live

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