Implementing Edge Based Object Detection For Microplastic Debris
Amardeep Singh, Charles Jia, Donald Kirk

TL;DR
This paper explores edge-based computer vision methods, particularly augmented CNNs, for detecting microplastic debris in images to aid in environmental cleanup efforts, emphasizing low connectivity and remote deployment.
Contribution
It introduces an effective edge-based object detection approach using augmented CNNs for identifying microplastic debris in images, suitable for deployment in low-connectivity environments.
Findings
Developed workable models for waste detection in images.
Compared various detection methods and waste types.
Identified optimal preprocessing and hardware for larger-scale detection.
Abstract
Plastic has imbibed itself as an indispensable part of our day to day activities, becoming a source of problems due to its non-biodegradable nature and cheaper production prices. With these problems, comes the challenge of mitigating and responding to the aftereffects of disposal or the lack of proper disposal which leads to waste concentrating in locations and disturbing ecosystems for both plants and animals. As plastic debris levels continue to rise with the accumulation of waste in garbage patches in landfills and more hazardously in natural water bodies, swift action is necessary to plug or cease this flow. While manual sorting operations and detection can offer a solution, they can be augmented using highly advanced computer imagery linked with robotic appendages for removing wastes. The primary application of focus in this report are the much-discussed Computer Vision and Open…
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Taxonomy
TopicsSmart Agriculture and AI · Scientific and Engineering Research Topics · Water Quality Monitoring Technologies
MethodsFocus
