Insect Detection Research in Natural Environment Based on Faster-R-CNN Model

Yunpan Du, Yang Liu, Nianqiang Li
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Abstract

In recent years, image-based automatic insect target detection technology has been developed in the field of insect target detection. Traditional insect target detection is mainly artificial identification, but in order to avoid the problem of low detection accuracy caused by subjective factors, using convolutional neural network to extract features automatically and using the deep learning model to detect insect targets. In addition, we improve the model from the following two aspects: On the one hand, because most of insect data sets we collected are taken in the field, the background of the data sets is very complex and the image resolution is not high. For this reason, we replace the basic network VGG16 of the model with ResNet50 with a deeper layer of network structure and fewer parameters. On the other hand, we use OHEM (online hard example mining) to solve the imbalance between the target frame and background frame in target detection. The results show that the accuracy of the improved Faster-RCNN model is 89.64, which is 4.31% higher than that of the non improved Faster-RCNN model.
基于Faster-R-CNN模型的自然环境昆虫检测研究
近年来,基于图像的昆虫目标自动检测技术在昆虫目标检测领域得到了发展。传统的昆虫目标检测主要是人工识别,但为了避免主观因素导致的检测精度低的问题,利用卷积神经网络自动提取特征,利用深度学习模型对昆虫目标进行检测。此外,我们还从以下两个方面对模型进行了改进:一方面,由于我们收集的昆虫数据集大多是在野外拍摄的,数据集背景非常复杂,图像分辨率不高;因此,我们将模型的基础网络VGG16替换为网络结构层次更深、参数更少的ResNet50。另一方面,我们使用OHEM(在线硬例挖掘)来解决目标检测中目标帧和背景帧之间的不平衡问题。结果表明,改进后的Faster-RCNN模型准确率为89.64,比未改进的Faster-RCNN模型提高了4.31%。
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