Hyperspectral Imaging Zero-Shot Learning for Remote Marine Litter Detection and Classification

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Abstract

This paper addresses the development of a novel zero-shot learning method for remote marine litter hyperspectral imaging data classification. The work consisted of using an airborne acquired marine litter hyperspectral imaging dataset that contains data about different plastic targets and other materials and assessing the viability of detecting and classifying plastic materials without knowing their exact spectral response in an unsupervised manner. The classification of the marine litter samples was divided into known and unknown classes, i.e., classes that were hidden from the dataset during the training phase. The obtained results show a marine litter automated detection for all the classes, including (in the worst case of an unknown class) a precision rate over 56% and an overall accuracy of 98.71%.

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APA

Freitas, S., Silva, H., & Silva, E. (2022). Hyperspectral Imaging Zero-Shot Learning for Remote Marine Litter Detection and Classification. Remote Sensing, 14(21). https://doi.org/10.3390/rs14215516

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