Affiliation:
1. Key Laboratory of Optoelectronic Technology and Systems Ministry of Education Chongqing University Chongqing China
2. The Engineering Research Center of Industrial Computed Tomography Nondestructive Testing Ministry of Education Chongqing University Chongqing China
3. College of Mechanical and Vehicle Engineering Chongqing University Chongqing China
4. Chongqing Key Laboratory of Complex Data Analysis & Artificial Intelligence Chongqing University of Arts and Sciences Chongqing China
5. Chongqing Key Laboratory of Group & Graph Theories and Applications Chongqing University of Arts and Sciences Chongqing China
6. School of Computer and Information Technology Shanxi University Taiyuan Shanxi China
Abstract
AbstractBackgroundWith the development of low‐dose computed tomography (CT), incomplete data reconstruction has been widely concerned. The total variation (TV) minimization algorithm can accurately reconstruct images from sparse or noisy data.PurposeHowever, the traditional TV algorithm ignores the direction of structures in images, leading to the loss of edge information and block artifacts when the object is not piecewise constant. Since the anisotropic information can facilitate preserving the edge and detail information in images, we aim to improve the TV algorithm in terms of reconstruction accuracy via this approach.MethodsIn this paper, we propose an adaptive‐weighted high order total variation (awHOTV) algorithm. We construct the second order TV‐norm using the second order gradient, adapt the anisotropic edge property between neighboring image pixels, adjust the local image‐intensity gradient to keep edge information, and design the corresponding Chambolle‐Pock (CP) solving algorithm. Implementing the proposed algorithm, comprehensive studies are conducted in the ideal projection data experiment where the Structural similarity (SSIM), Root Mean Square Error (RMSE), Contrast to noise ratio (CNR), and modulation transform function (MTF) curves are utilized to evaluate the quality of reconstructed images in statism, structure, spatial resolution, and contrast, respectively. In the noisy data experiment, we further use the noise power spectrum (NPS) curve to evaluate the reconstructed images and compare it with other three algorithms.ResultsWe use the 2D slice in the XCAT phantom, 2D slice in TCIA Challenge data and FORBILD phantom as simulation phantoms and use real bird data for real verification. The results show that, compared with the traditional TV and FBP algorithms, the awHOTV has better performance in terms of RMSE, SSIM, and Pearson correlation coefficient (PCC) under the projected data with different sparsity. In addition, the awHOTV algorithm is robust against the noise of different intensities.ConclusionsThe proposed awHOTV method can reconstruct the images with high accuracy under sparse or noisy data. The awHOTV solves the strip artifacts caused by sparse data in the FBP method. Compared with the TV method, the awHOTV can effectively suppress block artifacts and has good detail protection ability.
Funder
Natural Science Foundation of Chongqing
National Natural Science Foundation of China
Cited by
6 articles.
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