SAR Nets: An Evaluation of Semantic Segmentation Networks with Attention Mechanisms for Search and Rescue Scenes.
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This paper evaluates four semantic segmentation models in Search-and-Rescue (SAR) scenarios obtained from ground vehicles. Two base models are used (U-Net and PSPNet) to compare different approaches to semantic segmentation, such as skip connections between encoder and decoder stages and using a pooling pyramid module. The best base model is modified by including two attention mechanisms to analyze their performance and computational cost. We conduct a quantitative and qualitative evaluation using our SAR dataset defining eleven classes in disaster scenarios. The results demonstrate that
the attention mechanisms increase model performance while minimally affecting the computation time.
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Andrés Salas-Espinales, Ricardo Vázquez-Martı́n, Alfonso Garcı́a-Cerezo, and Anthony Mandow. SAR Nets: An Evaluation of Semantic Segmentation Networks with Attention Mechanisms for Search and Rescue Scenes. Proc. of the IEEE International Symposium on Safety, Security and Rescue Robotics (SSRR) 2023. Fukushima, Japan.
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Except where otherwised noted, this item's license is described as Attribution-NonCommercial-NoDerivatives 4.0 Internacional














