Corn kernel classification from few training samples

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Patricia L. Suárez , Henry O. Velesaca , Dario Carpio , Angel D. Sappa
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引用次数: 0

Abstract

This article presents an efficient approach to classify a set of corn kernels in contact, which may contain good, or defective kernels along with impurities. The proposed approach consists of two stages, the first one is a next-generation segmentation network, trained by using a set of synthesized images that is applied to divide the given image into a set of individual instances. An ad-hoc lightweight CNN architecture is then proposed to classify each instance into one of three categories (ie good, defective, and impurities). The segmentation network is trained using a strategy that avoids the time-consuming and human-error-prone task of manual data annotation. Regarding the classification stage, the proposed ad-hoc network is designed with only a few sets of layers to result in a lightweight architecture capable of being used in integrated solutions. Experimental results and comparisons with previous approaches showing both the improvement in accuracy and the reduction in time are provided. Finally, the segmentation and classification approach proposed can be easily adapted for use with other cereal types.

基于少量训练样本的玉米籽粒分类
本文提出了一种有效的方法来对一组接触的玉米粒进行分类,这些玉米粒可能含有好的或有缺陷的玉米粒以及杂质。所提出的方法由两个阶段组成,第一个阶段是下一代分割网络,通过使用一组合成图像进行训练,该合成图像用于将给定图像划分为一组单独的实例。然后提出了一种特别的轻量级CNN架构,将每个实例分为三类(即好的、有缺陷的和杂质)之一。使用一种策略来训练分割网络,该策略避免了手动数据注释的耗时且容易出错的任务。关于分类阶段,所提出的自组织网络只设计了几组层,以产生能够在集成解决方案中使用的轻量级架构。提供了实验结果以及与先前方法的比较,显示了准确性的提高和时间的缩短。最后,所提出的分割和分类方法可以很容易地适用于其他谷物类型。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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