Abstract:
Domain adaptive semantic segmentation aims to reduce domain shifts / discrepancies between source and target domains, improving the source domain model's generalization a...Show MoreMetadata
Abstract:
Domain adaptive semantic segmentation aims to reduce domain shifts / discrepancies between source and target domains, improving the source domain model's generalization ability to the target domain. Recently, prototypical methods, which primarily use single-source or single-target domain prototypes as category centers to aggregate features from both domains, have achieved competitive performance in this task. However, due to large domain shifts, single-source domain prototypes have finite generalization ability and not all source domain knowledge is conducive to model generalization. Single-target domain prototypes are noisy because they are prematurely initialized with all features filtered by pseudo labels, which causes error accumulation in the prototypes. To address these issues, we proposes a covariance-aware cross-domain prototypes method (CACP) to achieve robust domain adaptation. We propose to use both domain prototypes to dynamically rectify pseudo labels in the target domain, effectively reducing the recognition difficulty of hard target domain samples and narrowing the gap between features of the same category in both domains. In addition, to further generalize the model to the target domain, we propose two modules based on covariance correlation, FSPC (Features Selection by Prototypes Covariances) and WSPC (Weighting Source by Prototypes Coefficients), to learn discriminative characteristics. FSPC selects highly correlated features to update target domain prototypes online, denoising and enhancing discriminativeness between categories. WSPC utilizes the correlation coefficients between target domain prototypes and source domain features to weight each point in the source domain, eliminating the information interference from the source domain. In particular, CACP achieves excellent performance on the GTA5 \to Cityscapes and SYNTHIA \to Cityscapes tasks with minimal computational resources and time.
Published in: IEEE Transactions on Multimedia ( Early Access )
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Semantic Segmentation ,
- Domain Adaptation ,
- Adaptive Segmentation ,
- Domain Adaptation For Semantic Segmentation ,
- Domain Shift ,
- Domain Features ,
- Target Domain ,
- Correlated Features ,
- Feature Categories ,
- Source Domain ,
- Error Accumulation ,
- Generalization Ability Of The Model ,
- Pseudo Labels ,
- Pearson Correlation ,
- Neural Network ,
- Model Performance ,
- Convolutional Neural Network ,
- Deep Neural Network ,
- Distribution Characteristics ,
- Global Alignment ,
- Artificial Intelligence Training ,
- Style Transfer ,
- Self-supervised Learning ,
- Adversarial Training ,
- Image X ,
- Training Costs ,
- IEEE Transactions ,
- Final Performance ,
- Distillation Technique
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Semantic Segmentation ,
- Domain Adaptation ,
- Adaptive Segmentation ,
- Domain Adaptation For Semantic Segmentation ,
- Domain Shift ,
- Domain Features ,
- Target Domain ,
- Correlated Features ,
- Feature Categories ,
- Source Domain ,
- Error Accumulation ,
- Generalization Ability Of The Model ,
- Pseudo Labels ,
- Pearson Correlation ,
- Neural Network ,
- Model Performance ,
- Convolutional Neural Network ,
- Deep Neural Network ,
- Distribution Characteristics ,
- Global Alignment ,
- Artificial Intelligence Training ,
- Style Transfer ,
- Self-supervised Learning ,
- Adversarial Training ,
- Image X ,
- Training Costs ,
- IEEE Transactions ,
- Final Performance ,
- Distillation Technique
- Author Keywords