Abstract:
In this work, we propose a new two-view domain adaptation network named Deep-Shallow Domain Adaptation Network (DSDAN) for 3D point cloud recognition. Different from the ...Show MoreMetadata
Abstract:
In this work, we propose a new two-view domain adaptation network named Deep-Shallow Domain Adaptation Network (DSDAN) for 3D point cloud recognition. Different from the traditional 2D image recognition task, the valuable texture information is often absent in point cloud data, making point cloud recognition a challenging task, especially in the cross-dataset scenario where the training and testing data exhibit a considerable distribution mismatch. In our DSDAN method, we tackle the challenging cross-dataset 3D point cloud recognition task from two aspects. On one hand, we propose a two-view learning framework, such that we can effectively leverage multiple feature representations to improve the recognition performance. To this end, we propose a simple and efficient Bag-of-Points feature method, as a complementary view to the deep representation. Moreover, we also propose a cross view consistency loss to boost the two-view learning framework. On the other hand, we further propose a two-level adaptation strategy to effectively address the domain distribution mismatch issue. Specifically, we apply a feature-level distribution alignment module for each view, and also propose an instance-level adaptation approach to select highly confident pseudo-labeled target samples for adapting the model to the target domain, based on which a co-training scheme is used to integrate the learning and adaptation process on the two views. Extensive experiments on the benchmark dataset show that our newly proposed DSDAN method outperforms the existing state-of-the-art methods for the cross-dataset point cloud recognition task.
Published in: IEEE Transactions on Image Processing ( Volume: 30)
Funding Agency:
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- IEEE Keywords
- Index Terms
- Point Cloud ,
- Domain Adaptation ,
- Domain Adaptation Network ,
- Point Cloud Recognition ,
- Training Data ,
- Learning Process ,
- Challenging Task ,
- Feature Representation ,
- Recognition Task ,
- Benchmark Datasets ,
- Target Sample ,
- Recognition Performance ,
- Target Domain ,
- 3D Point ,
- 3D Point Cloud ,
- Point Cloud Data ,
- Consistency Loss ,
- Average Accuracy ,
- Prediction Score ,
- Loss Of Diversity ,
- Source Domain ,
- Common Feature Space ,
- Domain Adaptation Methods ,
- Common Space ,
- Deep Features ,
- Simplified Version ,
- Simplified Representation ,
- Source Domain Samples ,
- Vocabulary Size ,
- Different Types Of Features
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Point Cloud ,
- Domain Adaptation ,
- Domain Adaptation Network ,
- Point Cloud Recognition ,
- Training Data ,
- Learning Process ,
- Challenging Task ,
- Feature Representation ,
- Recognition Task ,
- Benchmark Datasets ,
- Target Sample ,
- Recognition Performance ,
- Target Domain ,
- 3D Point ,
- 3D Point Cloud ,
- Point Cloud Data ,
- Consistency Loss ,
- Average Accuracy ,
- Prediction Score ,
- Loss Of Diversity ,
- Source Domain ,
- Common Feature Space ,
- Domain Adaptation Methods ,
- Common Space ,
- Deep Features ,
- Simplified Version ,
- Simplified Representation ,
- Source Domain Samples ,
- Vocabulary Size ,
- Different Types Of Features
- Author Keywords