MRFP: Learning Generalizable Semantic Segmentation from Sim-2-Real with Multi-Resolution Feature Perturbation

Deep neural networks have shown exemplary performance on semantic scene understanding tasks on source domains, but due to the absence of style diversity during training, enhancing performance on unseen target domains using only single source domain data remains a challenging task. Generation of simulated data is a feasible alternative to retrieving large style-diverse real-world datasets as it is a cumbersome and budget-intensive process. However, the large domain-specfic inconsistencies between simulated and real-world data pose a significant generalization challenge in semantic segmentation. In this work, to alleviate this problem, we propose a novel MultiResolution Feature Perturbation (MRFP) technique to randomize domain-specific fine-grained features and perturb style of coarse features. Our experimental results on various urban-scene segmentation datasets clearly indicate that, along with the perturbation of style-information, perturbation of fine-feature components is paramount to learn domain invariant robust feature maps for semantic segmentation models. MRFP is a simple and computationally efficient, transferable module with no additional learnable parameters or objective functions, that helps state-of-the-art deep neural networks to learn robust domain invariant features for simulation-to-real semantic segmentation.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Semantic Segmentation BDD100K val Resnet50 mIoU 31.44 # 11
Semantic Segmentation BDD100K val MRFP+(Ours) Resnet50 mIoU 39.55 # 10
Semantic Segmentation Cityscapes val Resnet50 mIoU 34.66 # 97
Semantic Segmentation Cityscapes val MRFP+(Ours) Resnet50 mIoU 42.4 # 96
Semantic Segmentation Mapillary val MRFP+(Ours) Resnet50 mIoU 44.93 # 6
Semantic Segmentation Mapillary val Resnet50 mIoU 32.93 # 8
Semantic Segmentation SYNTHIA Resnet50 mIoU 25.84 # 3
Semantic Segmentation SYNTHIA MRFP+(Ours) Resnet50 mIoU 30.22 # 2

Methods