通过苞片枯萎率分析,基于深度学习检测青熟菠萝

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Guo-Fong Hong , Sumesh Nair , Chun-Yu Lin , Ching-Shan Kuan , Shean-Jen Chen
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引用次数: 0

摘要

青熟的菠萝在夏季适合长期运输和储存。然而,在现场收获过程中准确识别它们对农民来说仍然是一个挑战。为了解决这个问题,本研究提出了一种基于深度学习的YOLONAS-L算法,通过分析果实基部花苞片的萎蔫率来检测青熟菠萝。一辆配备英特尔D405深度相机的无人履带式车辆被用来穿越菠萝田,从300-400毫米的距离拍摄图像。每张图像覆盖了大约20个花苞片,检测分辨率约为30 × 30像素。摄像机还提供了菠萝的三维坐标,以支持自动收获。为了减轻环境光的变化,采用了白光LED照明系统(24V/5A)来增强照明。实验结果表明,与单纯识别菠萝基部相比,分析花苞片萎蔫可将青熟菠萝的识别准确率提高13.6%,达到95.4%。这些结果表明,基于深度学习的花苞片萎蔫分析显著提高了识别精度,为自动收获提供了强大的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based detection of green-ripe pineapples via bract wilting rate analysis
Green-ripe pineapples are ideal for long-term transportation and storage during summer. However, accurately identifying them during in-situ harvesting remains a challenge for farmers. To address this issue, this study proposes a deep learning-based YOLONAS-L algorithm to detect green-ripe pineapples by analyzing the wilting rate of floral bracts at the fruit's base. An unmanned tracked vehicle equipped with an Intel D405 depth camera was used to traverse pineapple fields, capturing images from a distance of 300–400 mm. Each image covered approximately 20 floral bracts, with a detection resolution of around 30 × 30 pixels. The camera also provided three-dimensional coordinates of the pineapples to support automated harvesting. To mitigate ambient light variations, a white LED lighting system (24V/5A) was implemented for illumination enhancement. Experimental results indicate that analyzing floral bract wilting improves green-ripe pineapple recognition accuracy by 13.6 %, reaching 95.4 %, compared to solely identifying the pineapple's base. These findings demonstrate that deep learning-based floral bract wilting analysis significantly enhances recognition accuracy and provides robust support for automated harvesting.
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CiteScore
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