Autonomous driving is rapidly advancing, and Level 2 functions are becoming a standard feature. One of the foremost outstanding hurdles is to obtain robust visual perception in harsh weather and low light conditions where accuracy degradation is severe. It is critical to have a weather classification model to decrease visual perception confidence during these scenarios. Thus, we have built a new dataset for weather (fog, rain, and snow) classification and light level (bright, moderate, and low) classification. Furthermore, we provide street type (asphalt, grass, and cobblestone) classification, leading to 9 labels. Each image has three labels corresponding to weather, light level, and street type. We recorded the data utilizing an industrial front camera of RCCC (red/clear) format with a resolution of $1024\times1084$. We collected 15k video sequences and sampled 60k images. We implement an active learning framework to reduce the dataset's redundancy and find the optimal set of frames for training a model. We distilled the 60k images further to 1.1k images, which will be shared publicly after privacy anonymization. There is no public dataset for weather and light level classification focused on autonomous driving to the best of our knowledge. The baseline ResNet18 network used for weather classification achieves state-of-the-art results in two non-automotive weather classification public datasets but significantly lower accuracy on our proposed dataset, demonstrating it is not saturated and needs further research.
翻译:自主驱动正在迅速推进,二级功能正在成为一个标准特征。 最突出的障碍之一是在严酷的天气和低光度条件下,准确性降解严重,在严酷的天气和低光度条件下获得强烈的视觉感知。 至关重要的是,要有一个天气分类模型,以降低这些情景的视觉信心。 因此,我们为天气(风、雨和雪)分类和光级(浅、中、低)分类建立了一套新的数据集。 此外,我们还提供街道类型(草、草和cobblestone)分类,导致9个标签。 每张图像都有与天气、光度和街道类型的三个标签。 我们用1024\time1084的分辨率(红/清晰)格式的工业前台相机记录数据。 我们收集了15k个视频序列和抽样60k图像。 我们实施一个积极的学习框架,以减少数据集的冗余性,并为培训模型找到最合适的框架。 我们将60k的图像进一步提炼为1.1k图像, 在隐私匿名化后,我们将公开分享三个标签。 我们没有使用公共气象定位网络(红/清晰度) 数据库数据库, 没有用于公共气象和光度数据分类的同步数据, 我们的同步数据, 将大量用于公共气象数据分类, 将数据定位数据升级数据升级到最低水平, 的网络将数据转换数据转换为2级, 用于公共气象数据, 用于公共气象数据, 用于公共气象数据, 的基线的基线, 数据, 数据, 数据升级到最精确数据分类。