scispace - formally typeset
Journal ArticleDOI

Efficient medical image enhancement based on CNN-FBB model

Tao Qiu, +5 more
- 01 Aug 2019 - 
- Vol. 13, Iss: 10, pp 1736-1744
Reads0
Chats0
TLDR
The experimental results indicate that the final enhanced image using the proposed method outperforms other methods, providing a more effective and accurate basis for medical workers to diagnose diseases.
Abstract
Medical image quality requirements have been increasingly stringent with the recent developments of medical technology. To meet clinical diagnosis needs, an effective medical image enhancement method based on convolutional neural networks (CNNs) and frequency band broadening (FBB) is proposed. Curvelet transform is used to deal with medical data by obtaining the curvelet coefficient in each scale and direction, and the generalised cross-validation is implemented to select the optimal threshold for performing denoising processing. Meanwhile, the cycle spinning scheme is used to wipe off the visible ringing effects along the edges of medical images. Then, FBB and a new CNN model based on the retinex model are used to improve the processed image resolution. Eventually, pixel-level fusion is made between two enhanced medical images from CNN and FBB. In the authors’ study, 50 groups of medical magnetic resonance imaging, X-ray, and computed tomography images in total have been studied. The experimental results indicate that the final enhanced image using the proposed method outperforms other methods. The resolution and the edge details of the processed image are significantly enhanced, providing a more effective and accurate basis for medical workers to diagnose diseases.

read more

Citations
More filters
Journal ArticleDOI

Small-Object Detection Based on YOLO and Dense Block via Image Super-Resolution

Abstract: Small-object detection is a basic and challenging problem in computer vision tasks. It is widely used in pedestrian detection, traffic sign detection, and other fields. This paper proposes a deep learning small-object detection method based on image super-resolution to improve the speed and accuracy of small-object detection. First, we add a feature texture transfer (FTT) module at the input end to improve the image resolution at this end as well as to remove the noise in the image. Then, in the backbone network, using the Darknet53 framework, we use dense blocks to replace residual blocks to reduce the number of network structure parameters to avoid unnecessary calculations. Then, to make full use of the features of small targets in the image, the neck uses a combination of SPPnet and PANnet to complete this part of the multi-scale feature fusion work. Finally, the problem of image background and foreground imbalance is solved by adding the foreground and background balance loss function to the YOLOv4 loss function part. The results of the experiment conducted using our self-built dataset show that the proposed method has higher accuracy and speed compared with the currently available small-target detection methods.
Journal ArticleDOI

A novel multimodality anatomical image fusion method based on contrast and structure extraction

TL;DR: A novel weighted term multimodality anatomical medical image fusion method, which eliminates the distortions from the source images and afterward, extracts two pieces of crucial information: the local contrast and the salient structure to obtain the final weight map.
Journal ArticleDOI

Sparse representation based computed tomography images reconstruction by coupled dictionary learning algorithm

TL;DR: An improved super-resolution method for CT medical images in the sparse representation domain with dictionary learning is proposed that sparse coupled dictionaries learn about each patch and establish the relationship between sparse coefficients of LR and HR image patches to recover the HR image patch for LR image.
Journal ArticleDOI

Intelligent Assessment of Percutaneous Coronary Intervention Based on GAN and LSTM Models

TL;DR: A framework to judge if a patient requires surgery, based on cardiac computerized tomography scans, is proposed, which adopts generative adversarial network to segment the calcified areas from slices and performs joint learning from ground truth images and the high-resolution discriminator.
References
More filters
Posted Content

Caffe: Convolutional Architecture for Fast Feature Embedding

TL;DR: Caffe as discussed by the authors is a BSD-licensed C++ library with Python and MATLAB bindings for training and deploying general-purpose convolutional neural networks and other deep models efficiently on commodity architectures.
Proceedings ArticleDOI

Caffe: Convolutional Architecture for Fast Feature Embedding

TL;DR: Caffe provides multimedia scientists and practitioners with a clean and modifiable framework for state-of-the-art deep learning algorithms and a collection of reference models for training and deploying general-purpose convolutional neural networks and other deep models efficiently on commodity architectures.
Journal ArticleDOI

Lightness and Retinex Theory

TL;DR: The mathematics of a lightness scheme that generates lightness numbers, the biologic correlate of reflectance, independent of the flux from objects is described.
Journal ArticleDOI

LIME: Low-Light Image Enhancement via Illumination Map Estimation

TL;DR: Experiments on a number of challenging low-light images are present to reveal the efficacy of the proposed LIME and show its superiority over several state-of-the-arts in terms of enhancement quality and efficiency.
Journal ArticleDOI

LightenNet: a Convolutional Neural Network for weakly illuminated image enhancement

TL;DR: A trainable Convolutional Neural Network is proposed for weakly illuminated image enhancement, namely LightenNet, which takes a weakly illumination image as input and outputs its illumination map that is subsequently used to obtain the enhanced image based on Retinex model.
Related Papers (5)