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arxiv:2304.14498

MWaste: A Deep Learning Approach to Manage Household Waste

Published on Apr 2, 2023
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Abstract

A mobile application using deep learning and computer vision classifies waste materials with high precision, aiding efficient waste processing and environmental sustainability.

AI-generated summary

Computer vision methods have shown to be effective in classifying garbage into recycling categories for waste processing, existing methods are costly, imprecise, and unclear. To tackle this issue, we introduce MWaste, a mobile application that uses computer vision and deep learning techniques to classify waste materials as trash, plastic, paper, metal, glass or cardboard. Its effectiveness was tested on various neural network architectures and real-world images, achieving an average precision of 92\% on the test set. This app can help combat climate change by enabling efficient waste processing and reducing the generation of greenhouse gases caused by incorrect waste disposal.

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