Enhancing oil palm segmentation model with GAN-based augmentation

In digital agriculture, accurate crop detection is fundamental to developing automated systems for efficient plantation management. For oil palm, the main challenge lies in developing robust models that perform well in different environmental conditions. This study addresses the feasibility of using...

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Veröffentlicht in:Journal of Big Data 2024-09, Vol.11 (1), p.126-15, Article 126
Hauptverfasser: Kwong, Qi Bin, Kon, Yee Thung, Rusik, Wan Rusydiah W., Shabudin, Mohd Nor Azizi, Rahman, Shahirah Shazana A., Kulaveerasingam, Harikrishna, Appleton, David Ross
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Sprache:eng
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Zusammenfassung:In digital agriculture, accurate crop detection is fundamental to developing automated systems for efficient plantation management. For oil palm, the main challenge lies in developing robust models that perform well in different environmental conditions. This study addresses the feasibility of using GAN augmentation methods to improve palm detection models. For this purpose, drone images of young palms ( 5 year-old), both models also achieved similar accuracies, with baseline model achieving precision and recall of 93.1% and 99.4%, and GAN-based model achieving 95.7% and 99.4%. As for the challenge dataset 2 consisting of storm affected palms, the baseline model achieved precision of 100% but recall was only 13%. The GAN-based model achieved a significantly better result, with a precision and recall values of 98.7% and 95.3%. This result demonstrates that images generated by GANs have the potential to enhance the accuracies of palm detection models.
ISSN:2196-1115
2196-1115
DOI:10.1186/s40537-024-00990-x