Goto

Collaborating Authors

 registration parameter


Export Reviews, Discussions, Author Feedback and Meta-Reviews

Neural Information Processing Systems

This work addresses the question of how to improve the invariance properties of Convolutional Neural Networks. It introduces the so-called spatial transformer, a layer that performs an adaptive warping of incoming feature maps, thus generalizing the recent attention mechanisms for images. The resulting model requires no extra supervision and is trained back-to-back using backpropagation, leading to state-of-the-art results on several classification tasks. The paper is clearly written and its main contribution, the spatial transformer layer, is valuable for its novelty, simplicity and effectiveness. The related work section covers most relevant literature, except perhaps recent works that combine deformable parts models with CNNs (see for example "Deformable Part Models are Convolutional Neural Networks", "End-to-End Integration of a Convolution Network, Deformable Parts Model and Non-Maximum Suppression" both at cvpr 2015), since they also incorporate an inference over deformation or registration parameters, as in the spatial transformer case.



Bayesian Image Super-resolution, Continued

Pickup, Lyndsey C., Capel, David P., Roberts, Stephen J., Zisserman, Andrew

Neural Information Processing Systems

This paper develops a multi-frame image super-resolution approach from a Bayesian viewpoint by marginalizing over the unknown registration parameters relating the set of input low-resolution views. In Tipping and Bishop's Bayesian image super-resolution approach [16], the marginalization was over the superresolution image, necessitating the use of an unfavorable image prior. By integrating over the registration parameters rather than the high-resolution image, our method allows for more realistic prior distributions, and also reduces the dimension of the integral considerably, removing the main computational bottleneck of the other algorithm. In addition to the motion model used by Tipping and Bishop, illumination components are introduced into the generative model, allowing us to handle changes in lighting as well as motion. We show results on real and synthetic datasets to illustrate the efficacy of this approach.


Bayesian Image Super-resolution, Continued

Pickup, Lyndsey C., Capel, David P., Roberts, Stephen J., Zisserman, Andrew

Neural Information Processing Systems

This paper develops a multi-frame image super-resolution approach from a Bayesian viewpoint by marginalizing over the unknown registration parameters relating the set of input low-resolution views. In Tipping and Bishop's Bayesian image super-resolution approach [16], the marginalization was over the superresolution image, necessitating the use of an unfavorable image prior. By integrating over the registration parameters rather than the high-resolution image, our method allows for more realistic prior distributions, and also reduces the dimension of the integral considerably, removing the main computational bottleneck of the other algorithm. In addition to the motion model used by Tipping and Bishop, illumination components are introduced into the generative model, allowing us to handle changes in lighting as well as motion. We show results on real and synthetic datasets to illustrate the efficacy of this approach.


Bayesian Image Super-Resolution

Tipping, Michael E., Bishop, Christopher M.

Neural Information Processing Systems

The extraction of a single high-quality image from a set of lowresolution imagesis an important problem which arises in fields such as remote sensing, surveillance, medical imaging and the extraction ofstill images from video. Typical approaches are based on the use of cross-correlation to register the images followed by the inversion of the transformation from the unknown high resolution imageto the observed low resolution images, using regularization toresolve the ill-posed nature of the inversion process. In this paper we develop a Bayesian treatment of the super-resolution problem in which the likelihood function for the image registration parametersis based on a marginalization over the unknown high-resolution image. This approach allows us to estimate the unknown point spread function, and is rendered tractable through the introduction of a Gaussian process prior over images. Results indicate a significant improvement over techniques based on MAP (maximum a-posteriori) point optimization of the high resolution image and associated registration parameters. 1 Introduction The task in super-resolution is to combine a set of low resolution images of the same scene in order to obtain a single image of higher resolution. Provided the individual low resolution images have sub-pixel displacements relative to each other, it is possible to extract high frequency details of the scene well beyond the Nyquist limit of the individual source images.


Bayesian Image Super-Resolution

Tipping, Michael E., Bishop, Christopher M.

Neural Information Processing Systems

The extraction of a single high-quality image from a set of lowresolution images is an important problem which arises in fields such as remote sensing, surveillance, medical imaging and the extraction of still images from video. Typical approaches are based on the use of cross-correlation to register the images followed by the inversion of the transformation from the unknown high resolution image to the observed low resolution images, using regularization to resolve the ill-posed nature of the inversion process. In this paper we develop a Bayesian treatment of the super-resolution problem in which the likelihood function for the image registration parameters is based on a marginalization over the unknown high-resolution image. This approach allows us to estimate the unknown point spread function, and is rendered tractable through the introduction of a Gaussian process prior over images. Results indicate a significant improvement over techniques based on MAP (maximum a-posteriori) point optimization of the high resolution image and associated registration parameters. 1 Introduction The task in super-resolution is to combine a set of low resolution images of the same scene in order to obtain a single image of higher resolution. Provided the individual low resolution images have sub-pixel displacements relative to each other, it is possible to extract high frequency details of the scene well beyond the Nyquist limit of the individual source images.


Bayesian Image Super-Resolution

Tipping, Michael E., Bishop, Christopher M.

Neural Information Processing Systems

The extraction of a single high-quality image from a set of lowresolution images is an important problem which arises in fields such as remote sensing, surveillance, medical imaging and the extraction of still images from video. Typical approaches are based on the use of cross-correlation to register the images followed by the inversion of the transformation from the unknown high resolution image to the observed low resolution images, using regularization to resolve the ill-posed nature of the inversion process. In this paper we develop a Bayesian treatment of the super-resolution problem in which the likelihood function for the image registration parameters is based on a marginalization over the unknown high-resolution image. This approach allows us to estimate the unknown point spread function, and is rendered tractable through the introduction of a Gaussian process prior over images. Results indicate a significant improvement over techniques based on MAP (maximum a-posteriori) point optimization of the high resolution image and associated registration parameters. 1 Introduction The task in super-resolution is to combine a set of low resolution images of the same scene in order to obtain a single image of higher resolution. Provided the individual low resolution images have sub-pixel displacements relative to each other, it is possible to extract high frequency details of the scene well beyond the Nyquist limit of the individual source images.