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Deep Learning approach for Classifying Trusses and Runners of Strawberries

Deep Learning approach for Classifying Trusses and Runners of Strawberries

来源:Arxiv_logoArxiv
英文摘要

The use of artificial intelligence in the agricultural sector has been growing at a rapid rate to automate farming activities. Emergent farming technologies focus on mapping and classification of plants, fruits, diseases, and soil types. Although, assisted harvesting and pruning applications using deep learning algorithms are in the early development stages, there is a demand for solutions to automate such processes. This paper proposes the use of Deep Learning for the classification of trusses and runners of strawberry plants using semantic segmentation and dataset augmentation. The proposed approach is based on the use of noises (i.e. Gaussian, Speckle, Poisson and Salt-and-Pepper) to artificially augment the dataset and compensate the low number of data samples and increase the overall classification performance. The results are evaluated using mean average of precision, recall and F1 score. The proposed approach achieved 91%, 95% and 92% on precision, recall and F1 score, respectively, for truss detection using the ResNet101 with dataset augmentation utilising Salt-and-Pepper noise; and 83%, 53% and 65% on precision, recall and F1 score, respectively, for truss detection using the ResNet50 with dataset augmentation utilising Poisson noise.

Isibor Kennedy Ihianle、Pedro Machado、David Ada Adama、Francisco de Lemos、Jakub Pomykala

农业科学技术发展计算技术、计算机技术园艺

Isibor Kennedy Ihianle,Pedro Machado,David Ada Adama,Francisco de Lemos,Jakub Pomykala.Deep Learning approach for Classifying Trusses and Runners of Strawberries[EB/OL].(2022-07-06)[2025-08-16].https://arxiv.org/abs/2207.02721.点此复制

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