NeurCross presents the first self-supervised neural network for generating cross fields for quad mesh generation, leveraging an optimizable neural Signed Distance Function (SDF) to robustly derive implicit principal curvature guidance. This joint optimization approach yields high-quality quadrilateral meshes, outperforming state-of-the-art methods on ShapeNet and Thingi10K datasets in terms of area distortion, angle distortion, Chamfer distance, and Jacobian ratio, while also exhibiting robustness to noise.
View blogThis study systematically investigates how different electron velocity distribution shapes influence bremsstrahlung radiation power in fusion plasmas. The work confirms that for electron-ion bremsstrahlung, the effect of distribution shape is relatively modest, typically causing less than 10% deviation from Maxwellian results, largely validating a key assumption in fusion plasma models; however, it also shows that anisotropic distributions can significantly reduce electron-electron bremsstrahlung, which becomes dominant at higher temperatures.
View blogMGCR-Net introduces a multimodal graph-conditioned vision-language reconstruction network to enhance remote sensing change detection by fusing visual and linguistic features. The framework leverages multimodal large language models to generate semantic cues and achieves state-of-the-art accuracy on four public datasets.
View blogAn end-to-end pipeline generates realistic, textured 3D faces from skull scans by combining biological profile-guided initial face generation with anatomy-guided adaptation based on learned tissue depth distributions. The method achieves a mean reconstruction error of 1.526% on a test dataset, outperforming previous methods and allowing interactive exploration of plausible facial appearances.
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