deconvolutional layer
Image Restoration Using Very Deep Convolutional Encoder-Decoder Networks with Symmetric Skip Connections
In this paper, we propose a very deep fully convolutional encoding-decoding framework for image restoration such as denoising and super-resolution. The network is composed of multiple layers of convolution and deconvolution operators, learning end-to-end mappings from corrupted images to the original ones. The convolutional layers act as the feature extractor, which capture the abstraction of image contents while eliminating noises/corruptions. Deconvolutional layers are then used to recover the image details. We propose to symmetrically link convolutional and deconvolutional layers with skip-layer connections, with which the training converges much faster and attains a higher-quality local optimum. First, the skip connections allow the signal to be back-propagated to bottom layers directly, and thus tackles the problem of gradient vanishing, making training deep networks easier and achieving restoration performance gains consequently. Second, these skip connections pass image details from convolutional layers to deconvolutional layers, which is beneficial in recovering the original image. Significantly, with the large capacity, we can handle different levels of noises using a single model. Experimental results show that our network achieves better performance than recent state-of-the-art methods.
Image Restoration Using Very Deep Convolutional Encoder-Decoder Networks with Symmetric Skip Connections
In this paper, we propose a very deep fully convolutional encoding-decoding framework for image restoration such as denoising and super-resolution. The network is composed of multiple layers of convolution and deconvolution operators, learning end-to-end mappings from corrupted images to the original ones. The convolutional layers act as the feature extractor, which capture the abstraction of image contents while eliminating noises/corruptions. Deconvolutional layers are then used to recover the image details. We propose to symmetrically link convolutional and deconvolutional layers with skip-layer connections, with which the training converges much faster and attains a higher-quality local optimum. First, the skip connections allow the signal to be back-propagated to bottom layers directly, and thus tackles the problem of gradient vanishing, making training deep networks easier and achieving restoration performance gains consequently. Second, these skip connections pass image details from convolutional layers to deconvolutional layers, which is beneficial in recovering the original image. Significantly, with the large capacity, we can handle different levels of noises using a single model. Experimental results show that our network achieves better performance than recent state-of-the-art methods.
- Oceania > Australia > South Australia > Adelaide (0.04)
- Europe > Spain > Catalonia > Barcelona Province > Barcelona (0.04)
- Asia > China > Jiangsu Province > Nanjing (0.04)
A Appendix B General experimental setup All experimental results presented in Section 5 were evaluated on an HTCondor cluster (see [
This section summarizes the different algorithms used for the Section 5 numerical studies. For all other benchmarks we use max_depth =3 and num_boost_rounds = 50 . ' and activate the deterministic Default values are used for all other hyperparameters. Figure 1 presents results of benchmark problems with known constraints. Domain bounds without decimals indicate integer-valued variable types.
80098914b3b3bad79b80377751a85430-Supplemental-Conference.pdf
Outline of Appendices Appendix A describes Chroma-V AE's model and training procedure in detail. Appendix B describes the experimental details in Sections 3 and 5. Appendix C contains Appendix D is a statement on the societal impact of our work. Figure 6 depicts Chroma-V AE and its training procedure. Section 3: CelebA (Synthetic Patch) We use standard CNN architecture. Section 5: ColouredMNIST We use standard CNN architecture.
Image Restoration Using Very Deep Convolutional Encoder-Decoder Networks with Symmetric Skip Connections † † State Key Laboratory for Novel Software Technology, Nanjing University, China
In this paper, we propose a very deep fully convolutional encoding-decoding framework for image restoration such as denoising and super-resolution. The network is composed of multiple layers of convolution and deconvolution operators, learning end-to-end mappings from corrupted images to the original ones. The convolutional layers act as the feature extractor, which capture the abstraction of image contents while eliminating noises/corruptions. Deconvolutional layers are then used to recover the image details. We propose to symmetrically link convolutional and deconvolutional layers with skip-layer connections, with which the training converges much faster and attains a higher-quality local optimum. First, the skip connections allow the signal to be back-propagated to bottom layers directly, and thus tackles the problem of gradient vanishing, making training deep networks easier and achieving restoration performance gains consequently. Second, these skip connections pass image details from convolutional layers to deconvolutional layers, which is beneficial in recovering the original image. Significantly, with the large capacity, we can handle different levels of noises using a single model. Experimental results show that our network achieves better performance than recent state-of-the-art methods.
- Asia > China > Jiangsu Province > Nanjing (0.40)
- Oceania > Australia > South Australia > Adelaide (0.04)
- Europe > Spain > Catalonia > Barcelona Province > Barcelona (0.04)