1,547 research outputs found
Acceleration of Histogram-Based Contrast Enhancement via Selective Downsampling
In this paper, we propose a general framework to accelerate the universal
histogram-based image contrast enhancement (CE) algorithms. Both spatial and
gray-level selective down- sampling of digital images are adopted to decrease
computational cost, while the visual quality of enhanced images is still
preserved and without apparent degradation. Mapping function calibration is
novelly proposed to reconstruct the pixel mapping on the gray levels missed by
downsampling. As two case studies, accelerations of histogram equalization (HE)
and the state-of-the-art global CE algorithm, i.e., spatial mutual information
and PageRank (SMIRANK), are presented detailedly. Both quantitative and
qualitative assessment results have verified the effectiveness of our proposed
CE acceleration framework. In typical tests, computational efficiencies of HE
and SMIRANK have been speeded up by about 3.9 and 13.5 times, respectively.Comment: accepted by IET Image Processin
Surface Roughness Effect in Hydrodynamic Thrust Bearing with Ultra Low Clearance
In the hydrodynamic thrust bearing with ultra-low clearance, even the nanoscale surface roughness is comparable to the bearing clearance, and its effect can be very significant. In this paper, the calculations are made for the performance of this bearing when the surface roughness is on the 1nm scale. It was found that the surface roughness effect in the bearing is strongly dependent on the physical adsorption of the fluid to the bearing surface determined by the interaction strength (or potential) between the fluid molecules and the molecules of the bearing surface; it can considerably enhance the load-carrying capacity of the bearing for the strong interaction between the fluid and the bearing surfaces
Contrast Enhancement of Brightness-Distorted Images by Improved Adaptive Gamma Correction
As an efficient image contrast enhancement (CE) tool, adaptive gamma
correction (AGC) was previously proposed by relating gamma parameter with
cumulative distribution function (CDF) of the pixel gray levels within an
image. ACG deals well with most dimmed images, but fails for globally bright
images and the dimmed images with local bright regions. Such two categories of
brightness-distorted images are universal in real scenarios, such as improper
exposure and white object regions. In order to attenuate such deficiencies,
here we propose an improved AGC algorithm. The novel strategy of negative
images is used to realize CE of the bright images, and the gamma correction
modulated by truncated CDF is employed to enhance the dimmed ones. As such,
local over-enhancement and structure distortion can be alleviated. Both
qualitative and quantitative experimental results show that our proposed method
yields consistently good CE results
PointGrow: Autoregressively Learned Point Cloud Generation with Self-Attention
Generating 3D point clouds is challenging yet highly desired. This work
presents a novel autoregressive model, PointGrow, which can generate diverse
and realistic point cloud samples from scratch or conditioned on semantic
contexts. This model operates recurrently, with each point sampled according to
a conditional distribution given its previously-generated points, allowing
inter-point correlations to be well-exploited and 3D shape generative processes
to be better interpreted. Since point cloud object shapes are typically encoded
by long-range dependencies, we augment our model with dedicated self-attention
modules to capture such relations. Extensive evaluations show that PointGrow
achieves satisfying performance on both unconditional and conditional point
cloud generation tasks, with respect to realism and diversity. Several
important applications, such as unsupervised feature learning and shape
arithmetic operations, are also demonstrated
Regional surname affinity: a spatial network approach
OBJECTIVE
We investigate surname affinities among areas of modern‐day China, by constructing a spatial network, and making community detection. It reports a geographical genealogy of the Chinese population that is result of population origins, historical migrations, and societal evolutions.
MATERIALS AND METHODS
We acquire data from the census records supplied by China's National Citizen Identity Information System, including the surname and regional information of 1.28 billion registered Chinese citizens. We propose a multilayer minimum spanning tree (MMST) to construct a spatial network based on the matrix of isonymic distances, which is often used to characterize the dissimilarity of surname structure among areas. We use the fast unfolding algorithm to detect network communities.
RESULTS
We obtain a 10‐layer MMST network of 362 prefecture nodes and 3,610 edges derived from the matrix of the Euclidean distances among these areas. These prefectures are divided into eight groups in the spatial network via community detection. We measure the partition by comparing the inter‐distances and intra‐distances of the communities and obtain meaningful regional ethnicity classification.
DISCUSSION
The visualization of the resulting communities on the map indicates that the prefectures in the same community are usually geographically adjacent. The formation of this partition is influenced by geographical factors, historic migrations, trade and economic factors, as well as isolation of culture and language. The MMST algorithm proves to be effective in geo‐genealogy and ethnicity classification for it retains essential information about surname affinity and highlights the geographical consanguinity of the population.National Natural Science Foundation of China, Grant/Award Numbers: 61773069, 71731002; National Social Science Foundation of China, Grant/Award Number: 14BSH024; Foundation of China of China Scholarships Council, Grant/Award Numbers: 201606045048, 201706040188, 201706040015; DOE, Grant/Award Number: DE-AC07-05Id14517; DTRA, Grant/Award Number: HDTRA1-14-1-0017; NSF, Grant/Award Numbers: CHE-1213217, CMMI-1125290, PHY-1505000 (61773069 - National Natural Science Foundation of China; 71731002 - National Natural Science Foundation of China; 14BSH024 - National Social Science Foundation of China; 201606045048 - Foundation of China of China Scholarships Council; 201706040188 - Foundation of China of China Scholarships Council; 201706040015 - Foundation of China of China Scholarships Council; DE-AC07-05Id14517 - DOE; HDTRA1-14-1-0017 - DTRA; CHE-1213217 - NSF; CMMI-1125290 - NSF; PHY-1505000 - NSF)Published versio
Traditional Chinese Medicine syndrome patterns and Qi-regulating, chest-relaxing and blood-activating therapy on cardiac syndrome X
AbstractObjectiveTo master the syndrome patterns characteristics and explore the effective therapy methods of Traditional Chinese Medicine (TCM) for cardiac syndrome X (CSX).MethodsThe TCM syndrome characteristics were mastered and the TCM intervention programs were determined by clinical investigations for TCM syndrome patterns characteristics of CSX patients. Then, the clinical efficacy studies on TCM intervention for CSX were carried out through randomized controlled trials.ResultsCSX is a clinical syndrome with the main manifestations of chest pain and chest stuffiness, and Qi stagnation, phlegm retention and blood stasis are the basic symptoms of CSX. As a result, the Qi-regulating, chest-relaxing and blood-activating therapy integrated with some Western Medicines was adopted for treatment. The effect of Qi-regulating, chest-relaxing and blood-activating therapy can reduce the frequency and degree of angina, improve the symptoms and exercise the tolerance of patients, inhibit the inflammatory response of vascular walls and protect the function of vascular endothelial cells, which is better than that of the simple and conventional Western Medicine alone.ConclusionA good effect was achieved in the integration of Chinese and Western Medicines for CSX. The therapy is worthy to be applied further in clinical practice. On the other hand, more long-term and randomised controlled studies with large samples are still required to further determine the clinical efficacy and safety of the therapy
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