Enhanced Threshold-based Segmentation for Maize Plantation

Joel M. Gumiran, Arnel F. Fajardo, Ruji P. Medina
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Abstract

Phenotyping, mainly plant’ health monitoring, is labor-and time-intensive, particularly for large-scale operations like maize plantations. Therefore, this research used a drone equipped with an RGB image to photograph the whole plantation quickly. On the other hand, RGB photographs do not categorize plants and weeds due to high brightness, shadows, and overlapped foliage. Therefore, several segmentation algorithms are used to solve various challenges. For instance, threshold-based segmentation can only accept progressive illumination, which is crucial for outdoor lighting, simplicity, and distinguishing objects with identical hues. For this kind of segmentation, however, intense light requires modification. Consequently, threshold-based segmentation was improved to normalize the disturbances above while rapidly separating leaves from weeds. In this manner, the Enhanced threshold-based segmentation had applied to RGB images of maize plantations like cornfields with distractions seen in the gathered photos with a segmentation accuracy of 92.41%. In comparison, the threshold-based segmentation had used in the same dataset without normalizing the picture's luminance, with a segmentation accuracy of 5.71%. Thus, the enhanced segmentation method improved segmentation accuracy by 86.7% compared to threshold-based segmentation, which is limited to extreme light conditions. Thus, the incorporated normalization in the segmentation process significantly increases the segmentation accuracy.
基于阈值的玉米种植区分割方法的改进
表型分析,主要是植物健康监测,是一项劳动和时间密集型的工作,特别是对玉米种植园等大规模经营而言。因此,本研究使用配备RGB图像的无人机对整个种植园进行快速拍摄。另一方面,由于高亮度、阴影和重叠的树叶,RGB照片不能对植物和杂草进行分类。因此,使用了几种分割算法来解决各种挑战。例如,基于阈值的分割只能接受渐进照明,这对于室外照明,简单性和区分相同色调的物体至关重要。然而,对于这种分割,强光需要修改。因此,改进了基于阈值的分割,使上述干扰归一化,同时快速分离叶片和杂草。这样,将增强阈值分割方法应用于采集到的照片中存在干扰的玉米种植园等RGB图像,分割准确率达到92.41%。在未对图像亮度进行归一化处理的情况下,使用基于阈值的分割方法对同一数据集进行分割,分割准确率为5.71%。因此,与基于阈值的分割相比,增强的分割方法的分割精度提高了86.7%,这仅限于极端光照条件下。因此,在分割过程中加入归一化可以显著提高分割精度。
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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