基于U^ 2-Net和成熟度计算的草莓图像分割

Huajie Wu, Yunlai Cheng, Ruiqi Zeng, L. Li
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引用次数: 1

摘要

草莓是最重要的经济作物之一,在世界各地广泛种植。由于草莓的成熟期较短,并且并非所有的草莓都是相同的成熟度,因此及时准确地了解每个草莓的具体成熟度值对于草莓的自动采摘非常重要。本研究旨在通过图像处理,实现草莓成熟度的数值作为草莓成熟度的定量指标。采用具有显著目标检测的深度网络U^2-Net进行训练和测试,自动分割图像中的草莓和背景;采用两道连接域分析对掩膜中的单个草莓进行分割,然后计算分割后的单个草莓中红色像素的百分比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strawberry Image Segmentation Based on U^ 2-Net and Maturity Calculation
Strawberries are one of the most important cash crops and are widely grown around the world. Since strawberries have a short ripening period and not all strawberries are of the same maturity, it is important to know the specific maturity value of each strawberry in a timely and accurate manner for automatic strawberry picking. This study is aimed at image processing in order to achieve numerical values of strawberry maturity as a quantitative indicator of strawberry maturity. A deep network U^2-Net with significant object detection is used, trained and tested to automatically segment strawberries and background in the image; Two-Pass concatenated domain analysis is used to segment individual strawberries in the mask, and then the percentage of red pixels in the segmented individual strawberries is calculated.
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