Small datasets for fruit detection with transfer learning.

Dan Dai, Junfeng Gao, Simon Parsons, E. Sklar
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引用次数: 1

Abstract

A common approach to the problem of fruit detection in images is to design a deep learning network and train a model to locate objects, using bounding boxes to identify regions containing fruit. However, this requires sufficient data and presents challenges for small datasets. Transfer learning, which acquires knowledge from a source domain and brings that to a new target domain, can produce improved performance in the target domain. The work discussed in this paper shows the application of transfer learning for fruit detection with small datasets and presents analysis between the number of training images in source and target domains. This investigation is based on three datasets: two containing tomatoes and one containing strawberries. Experimental results indicate that transfer learning can enhance prediction with limited data.
用迁移学习进行水果检测的小数据集。
解决图像中水果检测问题的一种常见方法是设计一个深度学习网络并训练一个模型来定位物体,使用边界框来识别包含水果的区域。然而,这需要足够的数据,并且对小数据集提出了挑战。迁移学习是一种从源领域获取知识并将其转移到新的目标领域的学习方法,可以提高目标领域的学习性能。本文讨论的工作展示了迁移学习在小数据集水果检测中的应用,并给出了源域和目标域训练图像数量之间的分析。这项调查基于三个数据集:两个包含西红柿,一个包含草莓。实验结果表明,迁移学习可以增强有限数据下的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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