Application of Computer Vision Techniques for Segregation of PlasticWaste based on Resin Identification Code

11/16/2020
by   Shivaank Agarwal, et al.
0

This paper presents methods to identify the plastic waste based on its resin identification code to provide an efficient recycling of post-consumer plastic waste. We propose the design, training and testing of different machine learning techniques to (i) identify a plastic waste that belongs to the known categories of plastic waste when the system is trained and (ii) identify a new plastic waste that do not belong the any known categories of plastic waste while the system is trained. For the first case,we propose the use of one-shot learning techniques using Siamese and Triplet loss networks. Our proposed approach does not require any augmentation to increase the size of the database and achieved a high accuracy of 99.74 of supervised and unsupervised dimensionality reduction techniques and achieved an accuracy of 95

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