scholarly journals Recovery of 3D rib motion from dynamic chest radiography and CT data using local contrast normalization and articular motion model

2019 ◽  
Vol 51 ◽  
pp. 144-156
Author(s):  
Yuta Hiasa ◽  
Yoshito Otake ◽  
Rie Tanaka ◽  
Shigeru Sanada ◽  
Yoshinobu Sato
2021 ◽  
pp. 028418512110225
Author(s):  
Hideyuki Hayashi ◽  
Kazuto Ashizawa ◽  
Masashi Takahashi ◽  
Katsuya Kato ◽  
Hiroaki Arakawa ◽  
...  

Background Chest radiography (CR) is employed as the evaluation of pneumoconiosis; however, we sometimes encounter cases in which computed tomography (CT) is more effective in detecting subtle pathological changes or cases in which CR yields false-positive results. Purpose To compare CR to CT in the diagnosis of early-stage pneumoconiosis. Material and Methods CR and CT were performed for 132 workers with an occupational history of mining. We excluded 23 cases of arc-welder’s lung. Five readers who were experienced chest radiologists or pulmonologists independently graded the pulmonary small opacities on CR of the remaining 109 cases. We then excluded 37 cases in which the CT data were not sufficient for grading. CT images of the remaining 72 cases were graded by the five readers. We also assessed the degree of pulmonary emphysema in those cases. Results The grade of profusion on CR (CR score) of all five readers was identical in only 5 of 109 cases (4.6%). The CR score coincided with that on CT in 40 of 72 cases (56%). The CT score was higher than that on CR in 13 cases (18%). On the other hand, the CT score was lower than that on CR in 19 cases (26%). The incidence of pulmonary emphysema was significantly higher in patients whose CR score was higher than their CT score. Conclusion CT is more sensitive than CR in the evaluation of early-stage pneumoconiosis. In cases with emphysema, the CR score tends to be higher in comparison to that on CT.


2008 ◽  
Vol 53 (20) ◽  
pp. 5815-5830 ◽  
Author(s):  
R Colgan ◽  
J McClelland ◽  
D McQuaid ◽  
P M Evans ◽  
D Hawkes ◽  
...  
Keyword(s):  
4D Ct ◽  
Ct Data ◽  

2017 ◽  
Vol 2017 ◽  
pp. 1-16 ◽  
Author(s):  
Shuangshuang Chen ◽  
Huiyi Liu ◽  
Xiaoqin Zeng ◽  
Subin Qian ◽  
Jianjiang Yu ◽  
...  

Image classification aims to group images into corresponding semantic categories. Due to the difficulties of interclass similarity and intraclass variability, it is a challenging issue in computer vision. In this paper, an unsupervised feature learning approach called convolutional denoising sparse autoencoder (CDSAE) is proposed based on the theory of visual attention mechanism and deep learning methods. Firstly, saliency detection method is utilized to get training samples for unsupervised feature learning. Next, these samples are sent to the denoising sparse autoencoder (DSAE), followed by convolutional layer and local contrast normalization layer. Generally, prior in a specific task is helpful for the task solution. Therefore, a new pooling strategy—spatial pyramid pooling (SPP) fused with center-bias prior—is introduced into our approach. Experimental results on the common two image datasets (STL-10 and CIFAR-10) demonstrate that our approach is effective in image classification. They also demonstrate that none of these three components: local contrast normalization, SPP fused with center-prior, and l2 vector normalization can be excluded from our proposed approach. They jointly improve image representation and classification performance.


2020 ◽  
Vol 194 ◽  
pp. 102947
Author(s):  
Mahdi Rad ◽  
Peter M. Roth ◽  
Vincent Lepetit

Author(s):  
Tejas Rana

Various experiments or methods can be used for face recognition and detection however two of the main contain an experiment that evaluates the impact of facial landmark localization in the face recognition performance and the second experiment evaluates the impact of extracting the HOG from a regular grid and at multiple scales. We observe the question of feature sets for robust visual object recognition. The Histogram of Oriented Gradients outperform other existing methods like edge and gradient based descriptors. We observe the influence of each stage of the computation on performance, concluding that fine-scale gradients, relatively coarse spatial binning, fine orientation binning and high- quality local contrast normalization in overlapping descriptor patches are all important for good results. Comparative experiments show that though HOG is simple feature descriptor, the proposed HOG feature achieves good results with much lower computational time.


Author(s):  
Mirko Marx ◽  
Jan Ehrhardt ◽  
René Werner ◽  
Heinz-Peter Schlemmer ◽  
Heinz Handels
Keyword(s):  
4D Mri ◽  

2006 ◽  
Vol 25 (9) ◽  
pp. 1223-1232 ◽  
Author(s):  
A.D. Fleming ◽  
S. Philip ◽  
K.A. Goatman ◽  
J.A. Olson ◽  
P.F. Sharp

2018 ◽  
Vol 4 (10) ◽  
pp. 117
Author(s):  
Praful Gupta ◽  
Christos Bampis ◽  
Jack Glover ◽  
Nicholas Paulter ◽  
Alan Bovik

Many existing natural scene statistics-based no reference image quality assessment (NR IQA) algorithms employ univariate parametric distributions to capture the statistical inconsistencies of bandpass distorted image coefficients. Here, we propose a multivariate model of natural image coefficients expressed in the bandpass spatial domain that has the potential to capture higher order correlations that may be induced by the presence of distortions. We analyze how the parameters of the multivariate model are affected by different distortion types, and we show their ability to capture distortion-sensitive image quality information. We also demonstrate the violation of Gaussianity assumptions that occur when locally estimating the energies of distorted image coefficients. Thus, we propose a generalized Gaussian-based local contrast estimator as a way to implement non-linear local gain control, which facilitates the accurate modeling of both pristine and distorted images. We integrate the novel approach of generalized contrast normalization with multivariate modeling of bandpass image coefficients into a holistic NR IQA model, which we refer to as multivariate generalized contrast normalization (MVGCN). We demonstrate the improved performance of MVGCN on quality-relevant tasks on multiple imaging modalities, including visible light image quality prediction and task success prediction on distorted X-ray images.


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