Combinatorial Optimization for Panoptic Segmentation: A Fully Differentiable Approach
–Neural Information Processing Systems
We propose a fully differentiable architecture for simultaneous semantic and instance segmentation (a.k.a. The latter solves a combinatorial optimization problem that elegantly incorporates semantic and boundary predictions to produce a panoptic labeling. Our formulation allows to directly maximize a smooth surrogate of the panoptic quality metric by backpropagating the gradient through the optimization problem. Experimental evaluation shows improvement by backpropagating through the optimization problem w.r.t. Overall, our approach of combinatorial optimization for panoptic segmentation (COPS) shows the utility of using optimization in tandem with deep learning in a challenging large scale real-world problem and showcases benefits and insights into training such an architecture.
Neural Information Processing Systems
Oct-11-2024, 14:01:12 GMT
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