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Xiao-Jiao Mao

Researcher at Nanjing University

Publications -  14
Citations -  1724

Xiao-Jiao Mao is an academic researcher from Nanjing University. The author has contributed to research in topics: Image restoration & Feature (computer vision). The author has an hindex of 7, co-authored 14 publications receiving 1387 citations.

Papers
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Proceedings Article

Image restoration using very deep convolutional encoder-decoder networks with symmetric skip connections

TL;DR: This paper proposes to symmetrically link convolutional and de-convolutional layers with skip-layer connections, with which the training converges much faster and attains a higher-quality local optimum, making training deep networks easier and achieving restoration performance gains consequently.
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Image Restoration Using Convolutional Auto-encoders with Symmetric Skip Connections

TL;DR: To deal with the problem that deeper networks tend to be more difficult to train, this work proposes to symmetrically link convolutional and deconvolutional layers with skip-layer connections, with which the training converges much faster and attains better results.
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Image Restoration Using Very Deep Convolutional Encoder-Decoder Networks with Symmetric Skip Connections

TL;DR: Wang et al. as mentioned in this paper proposed to symmetrically link convolutional and de-convolutional layers with skip-layer connections, with which the training converges much faster and attains a higher-quality local optimum.
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Image Denoising Using Very Deep Fully Convolutional Encoder-Decoder Networks with Symmetric Skip Connections.

TL;DR: A very deep encoding-decoding framework for image denoising that symmetrically link convolutional and de-convolutional layers with skip-layer connections, with which the training converges much faster and attains a higher-quality local optimum.
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Learning Deep Representations Using Convolutional Auto-encoders with Symmetric Skip Connections

TL;DR: A simple yet powerful CNN based denoising auto-encoder network which can be trained end-to-end in an unsupervised manner which can not only reconstruct clean images from corrupted ones, but also learn abstract image representation through the reconstruction training.