Adaptive enhancement of spatial information in adverse weather

Spatial Information Research(2024)

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摘要
In the context of spatial information, particularly in video surveillance and intelligent transportation systems, the visibility of video images is severely impacted by adverse climates including rain, snow, and fog. Accurate and swift recognition of current weather conditions and adaptive clarification of surveillance videos are crucial to maintaining the integrity of spatial information. Addressing the limitations of traditional weather recognition methods and the scarcity of weather image datasets, a multicategory weather image block dataset was constructed. This research introduced a weather recognition algorithm that integrates image block processing with feature fusion. The algorithm uses traditional methods to extract shallow spatial features such as average gradient, contrast, saturation, and dark channel from weather images. It also employs transfer learning to fine-tune a pretrained VGG16 model, extracting deep spatial features from the model’s fully connected layers. The approach improves the SoftMax classifier’s recognition of fog, rain, snow, and clear weather photos by merging shallow and deep spatial information. This improvement is essential for the quality and reliability of spatial data in bad weather. The algorithm achieves 99.26
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关键词
Spatial information,Adverse Weather,Image recognition,Fusion-based Algorithm,Multicategory Weather dataset,Video Surveillance,Intelligent Transportation
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