Real-time litchi detection in complex orchard environments: A portable, low-energy edge computing approach for enhanced automated harvesting

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Zeyu Jiao , Kai Huang , Qun Wang , Zhenyu Zhong , Yingjie Cai
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引用次数: 0

Abstract

Litchi, a succulent and perishable fruit, presents a narrow annual harvest window of under two weeks. The advent of smart agriculture has driven the adoption of visually-guided, automated litchi harvesting techniques. However, conventional approaches typically rely on laboratory-based, high-performance computing equipment, which presents challenges in terms of size, energy consumption, and practical application within litchi orchards. To address these limitations, we propose a real-time litchi detection methodology for complex environments, utilizing portable, low-energy edge computing devices. Initially, the litchi orchard imagery is collected to enhance data generalization. Subsequently, a convolutional neural network (CNN)-based single-stage detector, YOLOx, is constructed to accurately pinpoint litchi fruit locations within the images. To facilitate deployment on portable, low-energy edge devices, we employed channel pruning and layer pruning algorithms to compress the trained model, reducing its size and parameters. Additionally, the knowledge distillation technique is harnessed to fine-tune the network. Experimental findings demonstrated that our proposed method achieved a 97.1% compression rate, yielding a compact litchi detection model of a mere 6.9 MB, while maintaining 94.9% average precision and 97.2% average recall. Processing 99 frames per second (FPS), the method exhibited a 1.8-fold increase in speed compared to the unprocessed model. Consequently, our approach can be readily integrated into portable, low-computational automatic harvesting equipment, ensuring real-time, precise litchi detection within orchard settings.

在复杂果园环境中实时检测荔枝:一种便携式、低能耗的边缘计算方法,用于增强自动采摘功能
荔枝是一种多汁易腐烂的水果,每年只有不到两周的收获期。智能农业的出现推动了视觉引导、自动化荔枝收获技术的采用。然而,传统的方法通常依赖于基于实验室的高性能计算设备,这在规模、能耗和荔枝果园的实际应用方面提出了挑战。为了解决这些限制,我们提出了一种用于复杂环境的实时荔枝检测方法,利用便携式,低能耗的边缘计算设备。首先,收集荔枝园图像以增强数据泛化。随后,构建了基于卷积神经网络(CNN)的单级检测器YOLOx,以准确定位图像中的荔枝果实位置。为了便于在便携式、低能量的边缘设备上部署,我们使用通道修剪和层修剪算法来压缩训练模型,减小其大小和参数。此外,利用知识蒸馏技术对网络进行微调。实验结果表明,该方法实现了97.1%的压缩率,生成了一个紧凑的荔枝检测模型,仅为6.9 MB,同时保持了94.9%的平均精度和97.2%的平均召回率。该方法每秒处理99帧(FPS),与未处理的模型相比,速度提高了1.8倍。因此,我们的方法可以很容易地集成到便携式、低计算的自动收获设备中,确保在果园设置中实时、精确地检测荔枝。
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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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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