Application of computer vision and color image segmentation for yield prediction precision

R. S. Sarkate, N. Kalyankar, P. Khanale
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引用次数: 27

Abstract

Precision agriculture is finding its roots in India. PA always deals with the accuracy and timely information about agriculture products. With the rapid development of computer hardware and software technology, the application of image processing technology in the agricultural research are playing key role [1]. Also, with the advantages of superior speed and accuracy, computer vision has attracted it as an alternative to human inspection [2]. In this paper, we have described a novel application of computer vision and color image segmentation for automating the precise yield prediction process of gerbera flower yield from the polyhouse images. The purpose of the present study is to design a decision support system that could generate flower yield information and serve as base for management & planning of flower marketing. Current study has applied the color image segmentation technique using threshold, to extract the flowers from the scene. Color is considered a fundamental physical property of agriculture products and foods in information analysis [3]. Using HSV color space and histogram analysis, flower color definition is done. Then by the image segmentation process, flowers were separated from the background & detected in the images. Image set with 75 images were tested with this technique.
应用计算机视觉和彩色图像分割提高成品率预测精度
精准农业正在印度生根发芽。农业部一直致力于农产品信息的准确性和及时性。随着计算机软硬件技术的飞速发展,图像处理技术在农业研究中的应用正发挥着关键作用[1]。此外,计算机视觉以其优越的速度和准确性的优势,吸引了它作为人类检测的替代品[2]。在本文中,我们描述了一种新的应用计算机视觉和彩色图像分割,以自动精确预测非洲菊花产量的过程。本研究的目的是设计一个能够产生花卉产量信息的决策支持系统,为花卉营销的管理和规划提供依据。目前的研究是利用阈值对彩色图像进行分割,从场景中提取花朵。在信息分析中,颜色被认为是农产品和食品的基本物理性质[3]。利用HSV色彩空间和直方图分析,完成了花卉色彩的定义。然后通过图像分割处理,将花朵从背景中分离出来,并在图像中进行检测。用该技术对75幅图像进行了测试。
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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