Processing of Drone’s Digital Image for Determining Border of Rice Fields with Edge Detection Method

Suhardiman Diman, Z. Zainuddin, S. Manjang
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引用次数: 1

Abstract

Edge detection was the basic thing used in most image processing applications to get information from the image frame as a beginning for extracting the features of the segmentation object that will be detected. Nowadays, many edge detection methods create doubts in choosing the right edge detection method and according to image conditions. Based on the problems, a study was conducted to compare the performance of edge detection using methods of canny, Sobel and laplacian by using object of rice field. The program was created by using the Python programming language on OpenCV.  The result of the study on one image test that the Canny method produces thin and smooth edges and did not omit the important information on the image while it has required a lot of computing time. Classification is generally started from the data acquisition process; pre-processing and post-processing. Canny edge detection can detect actual edges with minimum error rates and produce optimal image edges. The threshold value obtained from the Canny method was the best and optimal threshold value for each method. The result of a test by comparing the three methods showed that the Canny edge detection method gives better results in determining the rice field boundary, which was 90% compared to Sobel 87% and laplacian 89%.
用边缘检测方法处理无人机数字图像确定稻田边界
边缘检测是大多数图像处理应用中使用的基本方法,它从图像帧中获取信息,作为提取待检测分割对象特征的开始。目前,许多边缘检测方法在根据图像条件选择合适的边缘检测方法方面存在问题。针对这些问题,以稻田为对象,比较了canny、Sobel和laplacian三种方法的边缘检测性能。该程序是在OpenCV上使用Python编程语言创建的。通过对一幅图像的测试研究表明,Canny方法得到的边缘薄而光滑,没有遗漏图像上的重要信息,但计算量较大。分类一般从数据采集过程开始;预处理和后处理。巧妙的边缘检测能够以最小的错误率检测出实际的边缘,并产生最优的图像边缘。Canny方法得到的阈值是每种方法的最佳和最优阈值。对比三种方法的测试结果表明,Canny边缘检测方法对稻田边界的确定率为90%,Sobel边缘检测方法为87%,laplacian边缘检测方法为89%。
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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