Detailed Evaluation of Modern Machine Learning Approaches for Optic Plastics Sorting
Vaishali Maheshkar, Aadarsh Anantha Ramakrishnan, Charuvahan Adhivarahan, Karthik Dantu

TL;DR
This paper evaluates modern machine learning techniques for optical plastics sorting, highlighting their limitations in real-world recycling scenarios due to reliance on physical features like color and shape.
Contribution
It provides a comprehensive assessment of ML-based optical sorting methods using novel datasets and interpretability tools, revealing their current limitations in practical applications.
Findings
Limited accuracy of optical recognition in real-world conditions
Dependence on physical features like color and shape
Challenges in deploying ML for effective plastic sorting
Abstract
According to the EPA, only 25% of waste is recycled, and just 60% of U.S. municipalities offer curbside recycling. Plastics fare worse, with a recycling rate of only 8%; an additional 16% is incinerated, while the remaining 76% ends up in landfills. The low plastic recycling rate stems from contamination, poor economic incentives, and technical difficulties, making efficient recycling a challenge. To improve recovery, automated sorting plays a critical role. Companies like AMP Robotics and Greyparrot utilize optical systems for sorting, while Materials Recovery Facilities (MRFs) employ Near-Infrared (NIR) sensors to detect plastic types. Modern optical sorting uses advances in computer vision such as object recognition and instance segmentation, powered by machine learning. Two-stage detectors like Mask R-CNN use region proposals and classification with deep backbones like ResNet.…
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Taxonomy
TopicsMicroplastics and Plastic Pollution · Advanced Neural Network Applications · Municipal Solid Waste Management
MethodsAverage Pooling · Convolution · Softmax · RoIAlign · Region Proposal Network · Global Average Pooling · Kaiming Initialization · Mask R-CNN · Max Pooling · Adversarial Model Perturbation
