基于地面DINO和SAM的羽衣甘蓝幼冠自动检测和分割,用于数据稀缺的农业应用

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Gianmarco Goycochea Casas , Zool Hilmi Ismail , Mohd Ibrahim Shapiai , Ettikan Kandasamy Karuppiah
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引用次数: 0

摘要

本研究通过引入植物检测和分割的自动管道,解决了农业数据稀缺的重大挑战。主要目标是在羽衣甘蓝(Brassica oleracea var. sabellica)生长早期检测和分割羽衣甘蓝幼体的冠区,而不依赖于大量的数据训练或人工注释,为数据不足的情况提供替代方案。一个包含羽衣甘蓝幼苗航拍图像的数据集在一个受控的环境中收集了三周。该模型使用NVIDIA GeForce RTX 4060 GPU进行处理。采用接地DINO基于文本提示进行植物检测,并生成边界框,定位每张图像中的中心植物。然后利用SAM对检测到的区域进行处理,提取植物冠的精确分割掩模。通过使用统计指标(包括Spearman’s correlation, RMSE%和Wilcoxon sign -rank检验)将自动方法与手动注释的地面真相进行比较,验证了分割结果。在所有周内,自动化方法与手动注释显示出很强的相关性(ρ = 0.956), RMSE%随着植物成熟而降低。由于生长早期的分割挑战,第1周表现出较低的一致性(ρ = 0.581, RMSE% = 56.246 %),但第2周(ρ = 0.945, RMSE% = 24.834 %)和第3周(ρ = 0.996, RMSE% = 11.733 %)的性能显著提高。统计验证证实了手动和自动注释之间的显著差异;然而,自动化方法一致地捕获了植物的生长趋势。总之,虽然该管道为数据稀缺环境中的植物检测和分割提供了一种很有前途的方法,但它的局限性,特别是在早期生长阶段,应该考虑到。该研究通过展示一种实用的方法来克服农业中数据稀缺的问题,该方法使用了能够进行零次和少次学习的多模态人工智能模型。这种方法为更具适应性的人工智能驱动的农业监测系统铺平了道路,解决了精准农业中数据稀缺的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated detection and segmentation of baby kale crowns using grounding DINO and SAM for data-scarce agricultural applications

Automated detection and segmentation of baby kale crowns using grounding DINO and SAM for data-scarce agricultural applications
This research addresses the significant challenge of data scarcity in agriculture by introducing an automatic pipeline for plant detection and segmentation. The primary objective was to detect and segment the crown area of baby kale (Brassica oleracea var. sabellica) during its early growth stages without relying on extensive data training or manual annotations, providing an alternative for scenarios with insufficient data. A dataset comprising aerial images of baby kale plants was gathered over a three-week period in a controlled environment. The model was processed using the NVIDIA GeForce RTX 4060 GPU. Grounding DINO was employed for plant detection based on textual prompts, and bounding boxes were generated to locate the central plant in each image. The detected regions were then processed using SAM to extract precise segmentation masks of the plant crown. The segmentation results were validated by comparing the automated method with manually annotated ground truth using statistical metrics, including Spearman's correlation, RMSE%, and the Wilcoxon signed-rank test. The automated approach demonstrated a strong correlation (ρ = 0.956) with manual annotations across all weeks, with RMSE% decreasing as plants matured. While Week 1 exhibited lower agreement (ρ = 0.581, RMSE% = 56.246 %) due to segmentation challenges at early growth stages, performance improved significantly in Week 2 (ρ = 0.945, RMSE% = 24.834 %) and Week 3 (ρ = 0.996, RMSE% = 11.733 %). The statistical validation confirmed a significant difference between manual and automated annotations; however, the automated method consistently captured the growth trend of the plants. In conclusion, while the pipeline offers a promising approach for plant detection and segmentation in data-scarce environments, its limitations, especially in early growth stages, should be considered. The study contributes by demonstrating a practical approach to overcoming data scarcity in agriculture using multimodal AI models capable of zero-shot and few-shot learning. This approach paves the way for more adaptive AI-driven agricultural monitoring systems, addressing data scarcity challenges in precision farming.
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