基于深度学习语义分割的草莓番石榴果实成熟检测

Nagaraju Y, Venkatesh, V. K. R.
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引用次数: 0

摘要

草莓番石榴是一种营养丰富的水果。人工采摘这种水果是一项耗时且劳动密集型的任务。成熟草莓果实的特性需要自动收获,因为成熟草莓不适合在两天内食用。近年来,基于深度学习的方法已经成为许多问题的答案。它们为农业等棘手领域带来了很多希望,在这些领域,它们可以比典型的计算机视觉方法更成功地管理数据失真。提出了一种基于语义分割的草莓番石榴识别算法。对改进的UNet模型进行训练,利用人工标注的图像对成熟的草莓番石榴果实进行适当的分割。为了分析我们对成熟草莓番石榴的分割实验结果,采用Dice评分方法。验证和测试数据集骰子得分分别为91.04%和89.72%。提出的方法表明,使用改进的UNet语义分割模型可以在少量输入图像的情况下准确检测成熟草莓番石榴。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning based Semantic Segmentation to Detect Ripened Strawberry Guava Fruits
Strawberry Guava is a fruit that is high in nutrients. Manually harvesting this fruit is a time-consuming and labor-intensive task. The characteristics of ripened strawberry fruit need automated harvesting, as matured strawberries are unfit for consumption within two days. Deep learning-based approaches have arisen as answers to many issues in recent years. They offer a lot of hope in tricky sectors like agriculture, where they can manage distortion in data more successfully than the typical computer vision approaches. This paper describes a strawberry guava identification algorithm based on semantic segmentation. The modified UNet model was trained to segment ripened strawberry guava fruit with the help of human-annotated images appropriately. To analyze our experimental results on the segmentation of ripened strawberry guava the Dice score measure was used. The validation and test dataset dice scores were 91.04% and 89.72%. The proposed methodology demonstrated that matured strawberry guava could be accurately detected using the modified UNet semantic segmentation model with a few input images.
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