优化玉米栽培:一种基于视觉的人工智能驱动的幼苗自动间伐方法

Zijian Wang;Xiaofei An;Ling Wang;Jinshan Tang
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引用次数: 0

摘要

为了解决传统人工间苗的挑战,本文提出了一种利用计算机视觉和深度学习进行自动间苗的创新方法。本文设计了一种零点关键点标注算法,利用任何模型的片段,在不需要训练样本的情况下对玉米苗木中心的大型数据集进行标注。我们还提出了一种改进的沙漏网络,可以显著提高幼苗中心的定位精度,从而实现精确的间伐决策。此外,设计了一种新的自动稀疏决策算法来确定最佳的移除策略,以确保理想的植株间距。该系统的性能通过人工标注的数据进行评估,这些数据来自1020幅图像,其中包括从农场收集的2756棵玉米幼苗。令人印象深刻的是,该算法的准确率达到了98.84%,证实了它在准确保存健康植物的同时识别出需要移除的幼苗的能力。在阈值为0.2时对关键点检测网络进行评估,关键点正确率为97.66%,目标关键点相似度为0.87,超过了现有方法,显示了模型的优越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Maize Cultivation: A Vision-Based AI-Driven Methodology for Automated Seedling Thinning
To address the challenges of traditional manual maize seedling thinning, this article proposes an innovative approach that utilizes computer vision and deep learning for automated thinning. A zero-shot keypoint annotation algorithm, leveraging segment for anything model, is designed to label large datasets of maize seedling centers without requiring training samples. We also propose an improved hourglass network that significantly enhances seedling center positioning accuracy, enabling precise thinning decisions. Furthermore, a novel automatic thinning decision algorithm is devised to determine optimal removal strategies, ensuring ideal plant-to-plant spacing. The system's performance was evaluated against manually annotated data from 1020 images encompassing 2756 individual maize seedlings collected from farms. Impressively, the algorithm achieved a precision rate of 98.84%, confirming its ability to identify seedlings for removal while preserving healthy plants accurately. Evaluations of the keypoint detection network at a threshold of 0.2 yielded a percentage of correct keypoints of 97.66% and an object keypoint similarity of 0.87, surpassing existing methods and demonstrating the model's superior performance.
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