Solid waste categorization is challenging
process but it is an important for recycle and disposal
wastes in a proper way. Currently in Ethiopia solid
waste are categorized manually as recyclable,
combustible and compostable. We propose the machine
learning approaching order to categorize the solid waste
as recyclable, combustible and compostable through the
machine. The scope of the study is to detect and
categorize the solid waste. The solid waste collected from
household, street sweeping, hotels, industries and other
industries from Addis Ababa, Ethiopia. For
experimental purpose we collected total 2445 images.
Among these we found 650images are recyclable,865
images are combustible and 930 images are compostable
category. The overall accuracy of our designed system is
89% and the model achieved 89%, 82% and
96%inrecyclable, combustible and compostable category
respectively. The designed approach accuracy result is
compared with manually identified categories and the
average percentage error is 10.82% and the designed
approach performs closer to the ground truth
categorized manually
Keywords : Solid Waste, Digital Image Processing, Image Segmentation, Machine Learning, Artificial Neural Network, Object Classification