AI RESEARCH

Training-free Spatially Grounded Geometric Shape Encoding (Technical Report)

arXiv CS.CV

ArXi:2604.07522v1 Announce Type: new Positional encoding has become the de facto standard for grounding deep neural networks on discrete point-wise positions, and it has achieved remarkable success in tasks where the input can be represented as a one-dimensional sequence. However, extending this concept to 2D spatial geometric shapes demands carefully designed encoding strategies that account not only for shape geometry and pose, but also for compatibility with neural network learning. In this work, we address these challenges by