Abstract:
Effective learning of asymmetric and local features in images and other data observed on multi-dimensional grids is a challenging objective critical for a wide range of i...Show MoreMetadata
Abstract:
Effective learning of asymmetric and local features in images and other data observed on multi-dimensional grids is a challenging objective critical for a wide range of image processing applications involving biomedical and natural images. It requires methods that are sensitive to local details while fast enough to handle massive numbers of images of ever increasing sizes. We introduce a probabilistic model-based framework that achieves these objectives by incorporating adaptivity into discrete wavelet transforms (DWT) through Bayesian hierarchical modeling, thereby allowing wavelet bases to adapt to the geometric structure of the data while maintaining the high computational scalability of wavelet methods—linear in the sample size (e.g., the resolution of an image). We derive a recursive representation of the Bayesian posterior model which leads to an exact message passing algorithm to complete learning and inference. While our framework is applicable to a range of problems including multi-dimensional signal processing, compression, and structural learning, we illustrate its work and evaluate its performance in the context of image reconstruction using real images from the ImageNet database, two widely used benchmark datasets, and a dataset from retinal optical coherence tomography and compare its performance to state-of-the-art methods based on basis transforms and deep learning.
Published in: IEEE Transactions on Pattern Analysis and Machine Intelligence ( Volume: 44, Issue: 11, 01 November 2022)
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- IEEE Keywords
- Index Terms
- Local Features ,
- Recursive Partitioning ,
- Asymmetric Features ,
- Bayesian Inference ,
- Bayesian Model ,
- Image Resolution ,
- Wide Range Of Applications ,
- Hierarchical Model ,
- Image Reconstruction ,
- Number Of Images ,
- Wavelet Transform ,
- Computational Scalability ,
- Wavelet Basis ,
- Message Passing ,
- Local Image Features ,
- Wavelet Method ,
- ImageNet Database ,
- Retinal Optical Coherence Tomography ,
- Permutation ,
- Posterior Probability ,
- Haar Wavelet ,
- Exact Inference ,
- Optical Coherence Tomography Images ,
- Energy Absorption ,
- Wavelet Domain ,
- 3D Images ,
- 2D Images ,
- Block Partitioning ,
- Bayesian Regression Model ,
- Bayesian Regression
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Local Features ,
- Recursive Partitioning ,
- Asymmetric Features ,
- Bayesian Inference ,
- Bayesian Model ,
- Image Resolution ,
- Wide Range Of Applications ,
- Hierarchical Model ,
- Image Reconstruction ,
- Number Of Images ,
- Wavelet Transform ,
- Computational Scalability ,
- Wavelet Basis ,
- Message Passing ,
- Local Image Features ,
- Wavelet Method ,
- ImageNet Database ,
- Retinal Optical Coherence Tomography ,
- Permutation ,
- Posterior Probability ,
- Haar Wavelet ,
- Exact Inference ,
- Optical Coherence Tomography Images ,
- Energy Absorption ,
- Wavelet Domain ,
- 3D Images ,
- 2D Images ,
- Block Partitioning ,
- Bayesian Regression Model ,
- Bayesian Regression
- Author Keywords
- MeSH Terms