Arecanut Bunch Segmentation Using Deep Learning Techniques

A. A. C., R. Dhanesha, Shrinivasa Naika C. L., K. A. N., Parinith S. Kumar, Parikshith P. Sharma
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引用次数: 1

Abstract

Agriculture and farming as a backbone of many developing countries provides food safety and security. Arecanut being a major plantation in India, take part an important role in the life of the farmers. Arecanut growth monitoring and harvesting needs skilled labors and it is very risky since the arecanut trees are very thin and tall. A vision-based system for agriculture and farming gains popularity in the recent years. Segmentation is a fundamental task in any vision-based system. A very few attempts been made for the segmentation of arecanut bunch and are based on hand-crafted features with limited performance. The aim of our research is to propose and develop an efficient and accurate technique for the segmentation of arecanut bunches by eliminating unwanted background information. This paper presents two deep-learning approaches: Mask Region-Based Convolutional Neural Network (Mask R-CNN) and U-Net for the segmentation of arecanut bunches from the tree images without any pre-processing. Experiments were done to estimate and evaluate the performances of both the methods and shows that Mask R-CNN performs better compared to U-Net and methods that apply segmentation on other commodities as there were no bench marks for the arecanut.
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使用深度学习技术分割槟榔束
农业和农业作为许多发展中国家的支柱,提供了食品安全和保障。槟榔是印度的主要种植园,在农民的生活中扮演着重要的角色。槟榔的生长监测和收获需要熟练的劳动力,而且由于槟榔树又细又高,因此风险很大。近年来,基于视觉的农业系统越来越受欢迎。分割是任何基于视觉的系统的基本任务。很少有人尝试对槟榔束进行分割,并且基于手工制作的特征,性能有限。我们的研究目的是提出和发展一种有效和准确的技术,通过消除不必要的背景信息来分割槟榔束。本文提出了两种深度学习方法:基于Mask区域的卷积神经网络(Mask R-CNN)和U-Net,用于在不进行任何预处理的情况下从树图像中分割花生仁束。我们做了实验来估计和评估这两种方法的性能,结果表明Mask R-CNN比U-Net和在其他商品上应用分割的方法表现得更好,因为没有对槟子进行基准测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Circuits, Systems and Signal Processing
International Journal of Circuits, Systems and Signal Processing Engineering-Electrical and Electronic Engineering
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