BIVS: Block Image and Voting Strategy for Weather Image Classification

Run Ye, B. Yan, Junhua Mi
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引用次数: 1

Abstract

Timely and accurate weather information is important for smart grid systems, autopilot systems and intelligent surveillance systems. This paper studies how to obtain weather information from a single image. The biggest challenge of weather image classification task is that there can be the same objects and features in images representing different weather conditions. To address this problem, first of all, this paper constructs the weather image dataset under outdoor transmission line scene, including images of foggy, rainy, snowy and sunny. Then, a weather image classification method based on block image and voting strategy is proposed. The method of block image and voting strategy achieves 98.74% classification accuracy in weather image dataset.
BIVS:用于天气图像分类的块图像和投票策略
及时、准确的天气信息对于智能电网系统、自动驾驶系统和智能监控系统非常重要。本文研究了如何从单幅图像中获取天气信息。天气图像分类任务的最大挑战是不同天气条件的图像中可能存在相同的物体和特征。为了解决这一问题,首先,本文构建了室外输电线路场景下的天气图像数据集,包括雾天、雨天、雪天和晴天图像。然后,提出了一种基于分块图像和投票策略的天气图像分类方法。分块图像和投票策略的方法在天气图像数据集上的分类准确率达到98.74%。
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