2024
DOI: 10.32920/25262803.v1
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Identifying Source Hotspots of “Non-Flushables” in Sewer Systems Through Machine Learning and Imaging Sensors

Anum Khan

Abstract: <p>This thesis examines the feasibility of installing imaging sensors in sewers, combined with innovative machine learning techniques, to detect and identify non-flushable consumer products in sewers. A Raspberry Pi microprocessor with an off-the-shelf camera module was used, and Edge Impulse was applied to process captured imagery. The results indicated that optimal placement of the system (camera and lights) can vary depending on whether the products of interest float near the surface of the water or m… Show more

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