CVAILGAPApr 20

Style-Based Neural Architectures for Real-Time Weather Classification

arXiv:2604.182514.7h-index: 12
Predicted impact top 75% in CV · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work provides efficient architectures for appearance-based classification tasks, but the novelty is incremental as it adapts existing techniques (PatchGAN, truncated ResNet, Gram matrix) to a specific domain.

The authors propose three neural network architectures for real-time weather classification from images, with two models (Truncated ResNet50 and its variant with Gram matrix and attention) outperforming state-of-the-art methods on multiple public databases.

In this paper, we present three neural network architectures designed for real-time classification of weather conditions (sunny, rain, snow, fog) from images. These models, inspired by recent advances in style transfer, aim to capture the stylistic elements present in images. One model, called "Multi-PatchGAN", is based on PatchGANs used in well-known architectures such as Pix2Pix and CycleGAN, but here adapted with multiple patch sizes for detection tasks. The second model, "Truncated ResNet50", is a simplified version of ResNet50 retaining only its first nine layers. This truncation, determined by an evolutionary algorithm, facilitates the extraction of high-frequency features essential for capturing subtle stylistic details. Finally, we propose "Truncated ResNet50 with Gram Matrix and Attention", which computes Gram matrices for each layer during training and automatically weights them via an attention mechanism, thus optimizing the extraction of the most relevant stylistic expressions for classification. These last two models outperform the state of the art and demonstrate remarkable generalization capability on several public databases. Although developed for weather detection, these architectures are also suitable for other appearance-based classification tasks, such as animal species recognition, texture classification, disease detection in medical imaging, or industrial defect identification.

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