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Proceedings ArticleDOI

Despeckling CNN with Ensembles of Classical Outputs

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TLDR
A convolutional neural network is developed which learns to remove speckle from US images using the outputs of these classical approaches and is able to outperform the state-of-the-art despeckling approaches and produces the outputs even better than the ensembles for certain images.
Abstract
Ultrasound (US) image despeckling is a problem of high clinical importance. Machine learning solutions to the problem are considered impractical due to the unavailability of speckle-free US image dataset. On the other hand, the classical approaches, which are able to provide the desired outputs, have limitations like input dependent parameter tuning. In this work, a convolutional neural network (CNN) is developed which learns to remove speckle from US images using the outputs of these classical approaches. It is observed that the existing approaches can be combined in a complementary manner to generate an output better than their individual outputs. Thus, the CNN is trained using the individual outputs as well as the output ensembles. It eliminates the cumbersome process of parameter tuning required by the existing approaches for every new input. Further, the proposed CNN is able to outperform the state-of-the-art despeckling approaches and produces the outputs even better than the ensembles for certain images.

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Citations
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Journal ArticleDOI

Speckle Noise Reduction in Ultrasound Images for Improving the Metrological Evaluation of Biomedical applications: an Overview

TL;DR: This paper describes, in detail, 27 techniques that mainly focus on the smoothing or elimination of speckle noise in medical ultrasound images, and describes recent techniques in the field of machine learning focused on deep learning, which are not yet well known but greatly relevant.
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A Comprehensive Survey of Machine Learning Applied to Radar Signal Processing.

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Content Driven On-Chip Compression and Time Efficient Reconstruction for Image Sensor Applications

TL;DR: The experiment shows that the compression of 86.2% can be achieved using the threshold of two intensity levels and the compressed image can be reconstructed with the PSNR of 45.87 dB.
Journal ArticleDOI

Comparative analysis of wavelet transform filtering systems for noise reduction in ultrasound images

TL;DR: The results show that the efficiency of the filtration strongly depends on the specific wavelet system setting, type of ultrasound data, and the noise present, which may provide a useful guideline for researchers, software developers, and clinical professionals to obtain high quality images.
References
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Journal ArticleDOI

Speckle Reduction Through Interactive Evolution of a General Order Statistics Filter for Clinical Ultrasound Imaging

TL;DR: An interactive tool performing adaptive speckle filtering so that the medical expert who runs the algorithm has permanent control over the output and guides the process towards obtaining enhanced images that agree to his/her subjective quality criteria is presented.
Journal ArticleDOI

Nonlocal means filter-based speckle tracking

TL;DR: This work develops a nonlocal means (NLM) filter based on a probabilistic normal variance mixture model of ultrasound, known as Rician-inverse Gaussian (RiIG) that is more accurate and less tissue-dependent than the other methods.
Book ChapterDOI

Edge Aware Geometric Filter for Ultrasound Image Enhancement

TL;DR: The proposed filter requires almost no parameter tuning and provides good quality outputs for synthetic as well as real ultrasound images and is compared with the state-of-the-art speckle reducing filters.
Posted Content

Unsupervised Despeckling

TL;DR: In this article, an unsupervised deep adversarial approach was used to address the despeckling problem using an adversarial loss imposed by a discriminator to differentiate between the deseckled images generated by the DRNN and the set of high-quality images.
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