84 research outputs found
Exploration of the Transformation to Digitalized Teaching Models in Art Courses of Preschool Education in Higher Education
This paper explores the transformation of teaching models in the art courses of preschool education in higher education under the context of digitalization. By analyzing the current teaching status and the application of digital technologies such as intelligent teaching platforms and virtual reality, a new integrated information technology teaching model is proposed. The study not only demonstrates the effects of this model in enhancing student engagement and creativity but also discusses the challenges and strategies in its implementation, providing new perspectives and methods for the development of future educational models
A Robust Error-Resistant View Selection Method for 3D Reconstruction
To address the issue of increased triangulation uncertainty caused by
selecting views with small camera baselines in Structure from Motion (SFM) view
selection, this paper proposes a robust error-resistant view selection method.
The method utilizes a triangulation-based computation to obtain an
error-resistant model, which is then used to construct an error-resistant
matrix. The sorting results of each row in the error-resistant matrix determine
the candidate view set for each view. By traversing the candidate view sets of
all views and completing the missing views based on the error-resistant matrix,
the integrity of 3D reconstruction is ensured. Experimental comparisons between
this method and the exhaustive method with the highest accuracy in the COLMAP
program are conducted in terms of average reprojection error and absolute
trajectory error in the reconstruction results. The proposed method
demonstrates an average reduction of 29.40% in reprojection error accuracy and
5.07% in absolute trajectory error on the TUM dataset and DTU dataset
A Highlight Removal Method for Capsule Endoscopy Images
The images captured by Wireless Capsule Endoscopy (WCE) always exhibit
specular reflections, and removing highlights while preserving the color and
texture in the region remains a challenge. To address this issue, this paper
proposes a highlight removal method for capsule endoscopy images. Firstly, the
confidence and feature terms of the highlight region's edges are computed,
where confidence is obtained by the ratio of known pixels in the RGB space's R
channel to the B channel within a window centered on the highlight region's
edge pixel, and feature terms are acquired by multiplying the gradient vector
of the highlight region's edge pixel with the iso-intensity line. Subsequently,
the confidence and feature terms are assigned different weights and summed to
obtain the priority of all highlight region's edge pixels, and the pixel with
the highest priority is identified. Then, the variance of the highlight
region's edge pixels is used to adjust the size of the sample block window, and
the best-matching block is searched in the known region based on the RGB color
similarity and distance between the sample block and the window centered on the
pixel with the highest priority. Finally, the pixels in the best-matching block
are copied to the highest priority highlight removal region to achieve the goal
of removing the highlight region. Experimental results demonstrate that the
proposed method effectively removes highlights from WCE images, with a lower
coefficient of variation in the highlight removal region compared to the
Crinimisi algorithm and DeepGin method. Additionally, the color and texture in
the highlight removal region are similar to those in the surrounding areas, and
the texture is continuous
Region Feature Descriptor Adapted to High Affine Transformations
To address the issue of feature descriptors being ineffective in representing
grayscale feature information when images undergo high affine transformations,
leading to a rapid decline in feature matching accuracy, this paper proposes a
region feature descriptor based on simulating affine transformations using
classification. The proposed method initially categorizes images with different
affine degrees to simulate affine transformations and generate a new set of
images. Subsequently, it calculates neighborhood information for feature points
on this new image set. Finally, the descriptor is generated by combining the
grayscale histogram of the maximum stable extremal region to which the feature
point belongs and the normalized position relative to the grayscale centroid of
the feature point's region. Experimental results, comparing feature matching
metrics under affine transformation scenarios, demonstrate that the proposed
descriptor exhibits higher precision and robustness compared to existing
classical descriptors. Additionally, it shows robustness when integrated with
other descriptors
Slower-decaying tropical cyclones produce heavier precipitation over China
The post-landfall decay of tropical cyclones (TC) is often closely linked to the magnitude of damage to the environment, properties, and the loss of human lives. Despite growing interest in how climate change affects TC decay, data uncertainties still prevent a consensus on changes in TC decay rates and related precipitation. Here, after strict data-quality control, we show that the rate of decay of TCs after making landfall in China has significantly slowed down by 45% from 1967 to 2018. We find that, except the warmer sea surface temperature, the eastward shift of TC landfall locations also contributes to the slowdown of TC decay over China. That is TCs making landfall in eastern mainland China (EC) decay slower than that in southern mainland China (SC), and the eastward shift of TCs landfall locations causes more TCs landfalling in EC with slower decay rate. TCs making landfall in EC last longer at sea, carry more moisture upon landfall, and have more favorable dynamic and thermodynamic conditions sustaining them after landfall. Observational evidence shows that the decay of TC-induced precipitation amount and intensity within 48âh of landfall is positively related to the decay rate of landfalling TCs. The significant increase in TC-induced precipitation over the long term, due to the slower decay of landfalling TCs, increases flood risks in Chinaâs coastal areas. Our results highlight evidence of a slowdown in TC decay rates at the regional scale. These findings provide scientific support for the need for better flood management and adaptation strategies in coastal areas under the threat of greater TC-induced precipitation
Attribution of the record-breaking extreme precipitation events in July 2021 over central and eastern China to anthropogenic climate change
In July 2021, Typhoon In-Fa produced record-breaking extreme precipitation events (hereafter referred to as the 2021 EPEs) in central and eastern China, and caused serious socioeconomic losses and casualties. However, it is still unknown whether the 2021 EPEs can be attributed to anthropogenic climate change (ACC) and how the occurrence probabilities of precipitation events of a similar magnitude might evolve in the future. The 2021 EPEs in central (eastern) China occurred in the context of no linear trend (a significantly increasing trend at a rate of 4.44%/decade) in the region-averaged Rx5day (summer maximum 5-day accumulated precipitation) percentage precipitation anomaly (PPA), indicating that global warming might have no impact on the 2021 EPE in central China but might have impacted the 2021 EPE in eastern China by increasing the long-term trend of EPEs. Using the scaled generalized extreme value distribution, we detected a slightly negative (significantly positive) association of the Rx5day PPA time series in central (eastern) China with the global mean temperature anomaly, suggesting that global warming might have no (a detectable) contribution to the changes in occurrence probability of precipitation extremes like the 2021 EPEs in central (eastern) China. Historical attributions (1961â2020) showed that the likelihood of the 2021 EPE in central/eastern China decreased/increased by approximately +47% (â23% to +89%)/+55% (â45% to +201%) due to ACC. By the end of the 21st century, the likelihood of precipitation extremes similar to the 2021 EPE in central/eastern China under SSP585 is 14 (9â19)/15 (9â20) times higher than under historical climate conditions
Proteomics analysis reveals a Th17-prone cell population in presymptomatic graft-versus-host disease
Gastrointestinal graft-versus-host-disease (GI-GVHD) is a life-threatening complication occurring after allogeneic hematopoietic cell transplantation (HCT), and a blood biomarker that permits stratification of HCT patients according to their risk of developing GI-GVHD would greatly aid treatment planning. Through in-depth, large-scale proteomic profiling of presymptomatic samples, we identified a T cell population expressing both CD146, a cell adhesion molecule, and CCR5, a chemokine receptor that is upregulated as early as 14 days after transplantation in patients who develop GI-GVHD. The CD4+CD146+CCR5+ T cell population is Th17 prone and increased by ICOS stimulation. shRNA knockdown of CD146 in T cells reduced their transmigration through endothelial cells, and maraviroc, a CCR5 inhibitor, reduced chemotaxis of the CD4+CD146+CCR5+ T cell population toward CCL14. Mice that received CD146 shRNA-transduced human T cells did not lose weight, showed better survival, and had fewer CD4+CD146+CCR5+ T cells and less pathogenic Th17 infiltration in the intestine, even compared with mice receiving maraviroc with control shRNA- transduced human T cells. Furthermore, the frequency of CD4+CD146+CCR5+ Tregs was increased in GI-GVHD patients, and these cells showed increased plasticity toward Th17 upon ICOS stimulation. Our findings can be applied to early risk stratification, as well as specific preventative therapeutic strategies following HCT
Nonstandard Errors
In statistics, samples are drawn from a population in a data-generating process (DGP). Standard errors measure the uncertainty in estimates of population parameters. In science, evidence is generated to test hypotheses in an evidence-generating process (EGP). We claim that EGP variation across researchers adds uncertainty-nonstandard errors (NSEs). We study NSEs by letting 164 teams test the same hypotheses on the same data. NSEs turn out to be sizable, but smaller for more reproducible or higher rated research. Adding peer-review stages reduces NSEs. We further find that this type of uncertainty is underestimated by participants
Non-Standard Errors
In statistics, samples are drawn from a population in a data-generating process (DGP). Standard errors measure the uncertainty in estimates of population parameters. In science, evidence is generated to test hypotheses in an evidence-generating process (EGP). We claim that EGP variation across researchers adds uncertainty: Non-standard errors (NSEs). We study NSEs by letting 164 teams test the same hypotheses on the same data. NSEs turn out to be sizable, but smaller for better reproducible or higher rated research. Adding peer-review stages reduces NSEs. We further find that this type of uncertainty is underestimated by participants
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