Lightweight Object Detection Model with Data Augmentation for Tiny Pest Detection

Zhipeng Yuan, Shunbao Li, Po Yang, Yang Li
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引用次数: 2

Abstract

With the increasing demand for cost-effective crop pest management solutions, how to achieve effective and efficient automatic pest detection has become the primary research problem. Traditional object detection methods that rely on the quality of handcrafted feature selection are hardly used in pest detection due to the difficulty of designing the features of multiple types of pests. The application of deep learning which presents outstanding performances in object detection tasks faces the following challenges in the field of pest detection. First, the detection difficulties caused by tiny-size pests and protective colouration limit the accuracy of detection. Second, pest detection requires the employment of experts to obtain the annotation of pests for training models, which is costly. Finally, the ability to run on lightweight devices is required due to the limitations of the field environment on networks and equipment. To solve these problems, this paper focuses on a lightweight tiny object detection model, training on limited supervised samples through different data augmentation methods. Different components of object detection models and data augmentation methods are analysed in different sizes of training datasets. Finally, a method based on the Yolo detection model is proposed for pest detection. This pest detection model is evaluated on a real-world aphids data set containing 6k objects. Five sets of data augmentation methods are used on seven sizes of training data sets for analysis. Then the structure of the detection neck of the Yolo model is analysed. Our experimental results show that 54.35% mAP can be achieved by the PAN module and removing the Mosaic data augmentation method for tiny object detection with one hundred samples.
用于微小害虫检测的具有数据增强的轻量级目标检测模型
随着人们对经济高效的作物病虫害管理解决方案的需求日益增加,如何实现有效、高效的害虫自动检测成为主要的研究问题。传统的目标检测方法依赖于手工特征选择的质量,由于难以设计多种类型害虫的特征,因此很难在害虫检测中得到应用。深度学习在目标检测任务中表现优异,在害虫检测领域的应用面临以下挑战。首先,微小害虫和保护性着色造成的检测困难限制了检测的准确性。其次,害虫检测需要聘请专家获取害虫标注进行模型训练,成本较高。最后,由于网络和设备的现场环境的限制,需要能够在轻量级设备上运行。为了解决这些问题,本文重点研究了一种轻量级的微小目标检测模型,通过不同的数据增强方法对有限的监督样本进行训练。在不同规模的训练数据集上分析了目标检测模型的不同组成部分和数据增强方法。最后,提出了一种基于Yolo检测模型的害虫检测方法。该害虫检测模型在包含6k个对象的真实蚜虫数据集上进行了评估。在7种大小的训练数据集上使用了5组数据增强方法进行分析。然后分析了Yolo模型检测颈的结构。实验结果表明,在100个样本的微小目标检测中,采用PAN模块并去除马赛克数据增强方法,mAP率可达54.35%。
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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