Hurst, Bradley, Bellotto, Nicola and Bosilj, Petra (2023) An assessment of self-supervised learning for data efficient potato instance segmentation. In: TAROS, Sep 12-15 2023, Cambridge, UK.
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Item Type: | Conference or Workshop contribution (Paper) |
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Item Status: | Live Archive |
Abstract
This work examines the viability of self-supervised learning approaches in the field of agri-robotics, specifically focusing on the segmentation of densely packed potato tubers in storage. The work assesses the impact of both the quantity and quality of data on self-supervised training, employing a limited set of both annotated and unannotated data. Mask R-CNN with a ResNet50 backbone is used for instance segmentation to evaluate self-supervised training performance. The results indicate that the self-supervised methods employed have a modest yet beneficial impact on the downstream task. A simpler approach yields more effective results with a larger dataset, whereas a more intricate method shows superior performance with a refined, smaller self-supervised dataset.
Keywords: | self supervised learning, Instance Segmentation, Small Dataset, Agriculture, agri-robotics |
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Subjects: | G Mathematical and Computer Sciences > G400 Computer Science |
Divisions: | COLLEGE OF HEALTH AND SCIENCE > School of Computer Science |
ID Code: | 56183 |
Deposited On: | 12 Sep 2023 12:38 |
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