使用手机在自然光下识别橄榄时作为图像预处理的色彩校正比较评估

David Mojaravscki, P. G. Graziano Magalhães
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引用次数: 0

摘要

将深度学习整合到作物监测中既是机遇也是挑战,尤其是在不同环境条件下的物体检测方面。本研究调查了在自然光下使用移动相机识别橄榄的图像预处理方法的功效。该研究立足于提高不同光照条件下物体检测精度这一更广泛的背景,这对于精准农业的实际应用至关重要。研究主要采用 YOLOv7 物体检测模型,并比较了各种色彩校正技术,包括直方图均衡化(HE)、自适应直方图均衡化(AHE)和使用 ColorChecker 进行的色彩校正。此外,研究还考察了数据增强方法的作用,如图像和边界框旋转与这些预处理技术的结合。研究结果表明,虽然与未处理的图像相比,所有预处理方法都能提高检测性能,但 AHE 在处理自然光变化方面尤为有效。研究还表明,在不同的预处理方法中,图像旋转增强始终能提高模型的准确性。这些结果对农业技术有重大贡献,强调了在物体检测模型中进行量身定制的图像预处理的重要性。这项研究得出的结论为优化深度学习在农业中的应用提供了宝贵的见解,尤其是在环境条件不一致的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Evaluation of Color Correction as Image Preprocessing for Olive Identification under Natural Light Using Cell Phones
Integrating deep learning for crop monitoring presents opportunities and challenges, particularly in object detection under varying environmental conditions. This study investigates the efficacy of image preprocessing methods for olive identification using mobile cameras under natural light. The research is grounded in the broader context of enhancing object detection accuracy in variable lighting, which is crucial for practical applications in precision agriculture. The study primarily employs the YOLOv7 object detection model and compares various color correction techniques, including histogram equalization (HE), adaptive histogram equalization (AHE), and color correction using the ColorChecker. Additionally, the research examines the role of data augmentation methods, such as image and bounding box rotation, in conjunction with these preprocessing techniques. The findings reveal that while all preprocessing methods improve detection performance compared to non-processed images, AHE is particularly effective in dealing with natural lighting variability. The study also demonstrates that image rotation augmentation consistently enhances model accuracy across different preprocessing methods. These results contribute significantly to agricultural technology, highlighting the importance of tailored image preprocessing in object detection models. The conclusions drawn from this research offer valuable insights for optimizing deep learning applications in agriculture, particularly in scenarios with inconsistent environmental conditions.
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