利用计算机视觉识别可收获黑胡椒

Shelbi Joseph, N. F. Jane Rose, P. Akhil
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引用次数: 1

摘要

本文的研究目的是利用计算机视觉加快可收获黑胡椒的识别速度,实现黑胡椒的自动收获。本文介绍了一种新的用数码相机采集的黑胡椒图像数据集。该系统基于多种图像处理技术和深度学习模型的结合,实现了一个能够从场景的不同元素(如叶子、树干、树枝和未成熟的辣椒)中识别和检测可收获黑胡椒的系统。该系统由3个阶段的图像处理和验证模型组成,以达到100%的精度。这种方法不仅提高了准确性,而且还减少了处理时间和所需的计算资源,因为只有在满足一组预定义条件的情况下,系统才能从一个阶段移动到另一个阶段。在对许多不同的分类器执行试错法之后,我们决定使用ResNet-50,这是一种基于CNN的分类器,由于其巨大的速度和准确性,我们决定使用ResNet-50来对测试结果进行最终验证。实验结果表明,该方法具有100%的全局精度和合理的扫描时间,可实现实时应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harvestable Black Pepper Recognition Using Computer Vision
The objective of the research presented in this paper is to speed up recognition of harvestable black pepper using computer vision for automated black pepper harvesting. In this paper we introduce a novel dataset of black pepper images acquired using a digital camera. The proposed system is based on a combination of several image processing techniques and a deep learning model to achieve a system capable of recognizing and detecting harvestable black pepper from different elements of the scene, such as leaves, tree trunks branches and unripe pepper. The system is composed of a 3-stage image processing and a verification model in order to achieve 100% accuracy. This approach not only increase the accuracy but also reduce the processing time and computational resources required as the system moves from one stage to another only if a set of pre-defined conditions are met. After performing trial and error method on a number of different classifiers we decided to use ResNet-50, a CNN based classifier for the final validation of test results due to its immense speed and accuracy. The experimental results are showing promising 100% global accuracy with reasonable scan time which will enable real time application.
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