一种识别成熟草莓的深度学习方法

Xin Li, Jun Yu Li, Jing Tang
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引用次数: 13

摘要

机器采摘草莓面临着一个复杂的环境,一个目标可能被树叶遮蔽,或者彼此重叠。此外,机器在不同成熟度的草莓中识别成熟的草莓也是一个挑战。本文提出了一种基于深度学习的高熟草莓快速识别方法。利用Ostu算法将目标从背景中分离出来,然后利用最小外部矩形标记法指定的有效图像区域训练CaffeNet进行目标自动识别。为了比较,我们还设计了一个使用HOG梯度方向特征和成熟草莓颜色特征H分量的SVM分类器。实验结果表明,CaffeNet对成熟草莓的平均识别率可达95%,比SVM高出11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning method for recognizing elevated mature strawberries
Strawberry picking by machines confronts a complex environment where a targe may be sheltered by leaves or overlap with each other. Also, it is a challenge for machines to recognize mature strawberries among those in different maturity. This work presents a fast recognition method for elevated mature strawberries by the approach of deep learning. It uses an Ostu algorithm to separate targets from background and then the resulted effective image areas designated by the minimum external rectangular marking method are used to train CaffeNet for automatic target recognition. For comparison, we also design a SVM classifer that uses HOG gradient direction feature and H component of the color feature of the mature strawberries. The experimental results show that the average recognition rate of mature strawberries by CaffeNet can reach 95%, higher than that by SVM by 11%.
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