Weather Condition Classification in Vehicle Environment Based on Front-View Camera Images

Jakob Triva, R. Grbić, M. Vranješ, N. Teslic
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Abstract

The current environmental conditions should be monitored during autonomous driving since the different weather conditions can have a different impact on implemented sensor system or on the efficiency of the implemented control system. In this paper, the classification of weather conditions in the vehicle environment is based on images captured by a front-view camera, which are further processed by the simple Convolutional Neural Network (CNN). For model development purposes, training and validation data sets were created from two sources: the BDD100K database and by extracting frames from the collected video sequences. The solution implements an additional mechanism to filter out false predictions based on a circular buffer. The proposed solution achieves the F1 measure of 98.3% for the entire test video frames data set, where it achieves the best results in snowy weather detection (Precision of 100%, F1 of 100.00%) and the worst in foggy weather detection (Precision of 97.25%, F1 of 98.00%).
基于前视摄像头图像的车辆环境天气状况分类
由于不同的天气条件会对实施的传感器系统或实施的控制系统的效率产生不同的影响,因此在自动驾驶过程中应该监测当前的环境条件。在本文中,车辆环境中的天气状况分类基于前视摄像头捕获的图像,并通过简单卷积神经网络(CNN)进一步处理。出于模型开发的目的,从两个来源创建了训练和验证数据集:BDD100K数据库和从收集的视频序列中提取帧。该解决方案实现了一种额外的机制来过滤基于循环缓冲区的错误预测。该方案对整个测试视频帧数据集的F1度量达到98.3%,其中在雪天检测中效果最好(精度为100%,F1为100.00%),在雾天检测中效果最差(精度为97.25%,F1为98.00%)。
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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