复杂环境下基于摄像机的目标检测增强方法研究

Gaojian Cui, Hong-mei He, Qingbin Zhou, Junchen Jiang, Shaosong Li
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引用次数: 2

摘要

针对当前目标检测方法在复杂环境条件下容易出现漏检和误检,导致检测精度降低的问题,提出了一种基于卷积神经网络的多复杂环境目标检测方法。首先,构建基于卷积神经网络的环境识别体系结构,对不同环境下采集的图像进行分类;然后,利用图像增强算法对不同环境下的图像分别进行增强。最后,基于YOLOX检测算法对不同环境下的增强图像进行训练,实现图像的实时检测,并使用NUSCENES数据集进行实验评估。结果表明,该检测方法将晴天、雨天、阴天和夜间环境下目标检测的平均精度AP分别提高了6.5%、13.56%、6.52%和6.82%,提高了对小目标的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Camera-Based Target Detection Enhancement Method in Complex Environment
A target detection method based on convolutional neural network for multiple complex environments is proposed to address the problem that current target detection methods are prone to miss detection and false detection under complex environment conditions, resulting in reduced detection accuracy. First, an environment recognition architecture is constructed based on convolutional neural networks to classify the images acquired in different environments. Then, the images in different environments are enhanced separately using an image enhancement algorithm. Finally, the enhanced images under different environments are trained based on the YOLOX detection algorithm to achieve real-time detection of the images, and the NUSCENES dataset is used for experimental evaluation. The results show that the proposed detection method improves the average accuracy AP for target detection in sunny, rainy, cloudy and night environments by 6.5%, 13.56%, 6.52% and 6.82%, respectively, improving the detection of small targets.
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