126 research outputs found
Enhanced CNN for image denoising
Owing to flexible architectures of deep convolutional neural networks (CNNs),
CNNs are successfully used for image denoising. However, they suffer from the
following drawbacks: (i) deep network architecture is very difficult to train.
(ii) Deeper networks face the challenge of performance saturation. In this
study, the authors propose a novel method called enhanced convolutional neural
denoising network (ECNDNet). Specifically, they use residual learning and batch
normalisation techniques to address the problem of training difficulties and
accelerate the convergence of the network. In addition, dilated convolutions
are used in the proposed network to enlarge the context information and reduce
the computational cost. Extensive experiments demonstrate that the ECNDNet
outperforms the state-of-the-art methods for image denoising.Comment: CAAI Transactions on Intelligence Technology[J], 201
A Distributed Computation Model Based on Federated Learning Integrates Heterogeneous models and Consortium Blockchain for Solving Time-Varying Problems
The recurrent neural network has been greatly developed for effectively
solving time-varying problems corresponding to complex environments. However,
limited by the way of centralized processing, the model performance is greatly
affected by factors like the silos problems of the models and data in reality.
Therefore, the emergence of distributed artificial intelligence such as
federated learning (FL) makes it possible for the dynamic aggregation among
models. However, the integration process of FL is still server-dependent, which
may cause a great risk to the overall model. Also, it only allows collaboration
between homogeneous models, and does not have a good solution for the
interaction between heterogeneous models. Therefore, we propose a Distributed
Computation Model (DCM) based on the consortium blockchain network to improve
the credibility of the overall model and effective coordination among
heterogeneous models. In addition, a Distributed Hierarchical Integration (DHI)
algorithm is also designed for the global solution process. Within a group,
permissioned nodes collect the local models' results from different
permissionless nodes and then sends the aggregated results back to all the
permissionless nodes to regularize the processing of the local models. After
the iteration is completed, the secondary integration of the local results will
be performed between permission nodes to obtain the global results. In the
experiments, we verify the efficiency of DCM, where the results show that the
proposed model outperforms many state-of-the-art models based on a federated
learning framework
Heterogeneous window transformer for image denoising
Deep networks can usually depend on extracting more structural information to
improve denoising results. However, they may ignore correlation between pixels
from an image to pursue better denoising performance. Window transformer can
use long- and short-distance modeling to interact pixels to address mentioned
problem. To make a tradeoff between distance modeling and denoising time, we
propose a heterogeneous window transformer (HWformer) for image denoising.
HWformer first designs heterogeneous global windows to capture global context
information for improving denoising effects. To build a bridge between long and
short-distance modeling, global windows are horizontally and vertically shifted
to facilitate diversified information without increasing denoising time. To
prevent the information loss phenomenon of independent patches, sparse idea is
guided a feed-forward network to extract local information of neighboring
patches. The proposed HWformer only takes 30% of popular Restormer in terms of
denoising time
A self-supervised CNN for image watermark removal
Popular convolutional neural networks mainly use paired images in a
supervised way for image watermark removal. However, watermarked images do not
have reference images in the real world, which results in poor robustness of
image watermark removal techniques. In this paper, we propose a self-supervised
convolutional neural network (CNN) in image watermark removal (SWCNN). SWCNN
uses a self-supervised way to construct reference watermarked images rather
than given paired training samples, according to watermark distribution. A
heterogeneous U-Net architecture is used to extract more complementary
structural information via simple components for image watermark removal.
Taking into account texture information, a mixed loss is exploited to improve
visual effects of image watermark removal. Besides, a watermark dataset is
conducted. Experimental results show that the proposed SWCNN is superior to
popular CNNs in image watermark removal
Image Super-resolution with An Enhanced Group Convolutional Neural Network
CNNs with strong learning abilities are widely chosen to resolve
super-resolution problem. However, CNNs depend on deeper network architectures
to improve performance of image super-resolution, which may increase
computational cost in general. In this paper, we present an enhanced
super-resolution group CNN (ESRGCNN) with a shallow architecture by fully
fusing deep and wide channel features to extract more accurate low-frequency
information in terms of correlations of different channels in single image
super-resolution (SISR). Also, a signal enhancement operation in the ESRGCNN is
useful to inherit more long-distance contextual information for resolving
long-term dependency. An adaptive up-sampling operation is gathered into a CNN
to obtain an image super-resolution model with low-resolution images of
different sizes. Extensive experiments report that our ESRGCNN surpasses the
state-of-the-arts in terms of SISR performance, complexity, execution speed,
image quality evaluation and visual effect in SISR. Code is found at
https://github.com/hellloxiaotian/ESRGCNN
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