Neural Implicit Surface rEconstruction
Neural implicit surface reconstruction aims to create detailed 3D models from 2D images or other sparse data by representing the surface as a neural network that outputs a signed distance function. Current research focuses on improving accuracy, especially for challenging surfaces (specular, textureless), reducing computational cost through techniques like hierarchical volume encoding and sparse data structures, and enhancing robustness to noisy or incomplete input data, including addressing inaccurate camera poses. This field is significant for its potential applications in virtual and augmented reality, autonomous driving, and medical imaging, offering a powerful alternative to traditional 3D reconstruction methods.
Papers
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