scholarly journals Ultrasound Image Representation Learning by Modeling Sonographer Visual Attention

Author(s):  
Richard Droste ◽  
Yifan Cai ◽  
Harshita Sharma ◽  
Pierre Chatelain ◽  
Lior Drukker ◽  
...  
Author(s):  
Xifeng Guo ◽  
Jiyuan Liu ◽  
Sihang Zhou ◽  
En Zhu ◽  
Shihao Dong

2019 ◽  
pp. 1-14 ◽  
Author(s):  
Yuan Yuan ◽  
Hailong Ning ◽  
Xiaoqiang Lu

2015 ◽  
Vol 734 ◽  
pp. 596-599 ◽  
Author(s):  
Deng Ping Fan ◽  
Juan Wang ◽  
Xue Mei Liang

The Context-Aware Saliency (CA) model—is a new model used for saliency detection—has strong limitations: It is very time consuming. This paper improved the shortcoming of this model namely Fast-CA and proposed a novel framework for image retrieval and image representation. The proposed framework derives from Fast-CA and multi-texton histogram. And the mechanisms of visual attention are simulated and used to detect saliency areas of an image. Furthermore, a very simple threshold method is adopted to detect the dominant saliency areas. Color, texture and edge features are further extracted to describe image content within the dominant saliency areas, and then those features are integrated into one entity as image representation, where image representation is so called the dominant saliency areas histogram (DSAH) and used for image retrieval. Experimental results indicate that our algorithm outperform multi-texton histogram (MTH) and edge histogram descriptors (EHD) on Corel dataset with 10000 natural images.


2021 ◽  
Vol 7 (2) ◽  
pp. 755-758
Author(s):  
Daniel Wulff ◽  
Mohamad Mehdi ◽  
Floris Ernst ◽  
Jannis Hagenah

Abstract Data augmentation is a common method to make deep learning assessible on limited data sets. However, classical image augmentation methods result in highly unrealistic images on ultrasound data. Another approach is to utilize learning-based augmentation methods, e.g. based on variational autoencoders or generative adversarial networks. However, a large amount of data is necessary to train these models, which is typically not available in scenarios where data augmentation is needed. One solution for this problem could be a transfer of augmentation models between different medical imaging data sets. In this work, we present a qualitative study of the cross data set generalization performance of different learning-based augmentation methods for ultrasound image data. We could show that knowledge transfer is possible in ultrasound image augmentation and that the augmentation partially results in semantically meaningful transfers of structures, e.g. vessels, across domains.


2020 ◽  
pp. 1-1
Author(s):  
Shijie Yang ◽  
Liang Li ◽  
Shuhui Wang ◽  
Weigang Zhang ◽  
Qingming Huang ◽  
...  

2020 ◽  
Vol 10 (18) ◽  
pp. 6460
Author(s):  
Junaid Younas ◽  
Shoaib Ahmed Siddiqui ◽  
Mohsin Munir ◽  
Muhammad Imran Malik ◽  
Faisal Shafait ◽  
...  

We propose a novel hybrid approach that fuses traditional computer vision techniques with deep learning models to detect figures and formulas from document images. The proposed approach first fuses the different computer vision based image representations, i.e., color transform, connected component analysis, and distance transform, termed as Fi-Fo image representation. The Fi-Fo image representation is then fed to deep models for further refined representation-learning for detecting figures and formulas from document images. The proposed approach is evaluated on a publicly available ICDAR-2017 Page Object Detection (POD) dataset and its corrected version. It produces the state-of-the-art results for formula and figure detection in document images with an f1-score of 0.954 and 0.922, respectively. Ablation study results reveal that the Fi-Fo image representation helps in achieving superior performance in comparison to raw image representation. Results also establish that the hybrid approach helps deep models to learn more discriminating and refined features.


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