Elliot Eichen, Arvind Aradhya, Oren Collaco
Hasil untuk "eess.IV"
Menampilkan 20 dari ~771951 hasil · dari arXiv, CrossRef, DOAJ
Ernest Greene
There is perceptual and physiological evidence that the retina registers and signals luminance and luminance contrast using dual-channel mechanisms. This process begins in the retina, wherein the luminance of a uniform zone and differentials of luminance in neighboring zones determine the degree of brightness or darkness of the zones. The neurons that process the information can be classified as "bright" or "dark" channels. The present paper provides an overview of these retinal mechanisms along with evidence that they provide brightness judgments that are log-linear across roughly seven orders of magnitude.
Nahrisyah, Ramona Dumasari Lubis, Remenda Siregar
Introduction: Leprosy is a chronic infection caused by Mycobacterium leprae (M. Leprae) which no biological examination can yet be appointed as an early marker. This research is aimed to analyze the correlation between serum IL-6 levels and the severity of the ENLIST ENL Severity Scale (EESS) in ENL. Methods: A cross-sectional study was conducted on all leprosy patients with ENL who sought treatment at the Dermatology and Venereology Polyclinic, North Sumatra University Hospital, dr. Pirngadi General Hospital, and H. Adam Malik General Hospital Medan. ENL patients who were uncooperative, with infectious, autoimmune, malignant diseases, or who were pregnant or breastfeeding were excluded. Data processing was carried out with the help of statistical software with a significance value <0.05. Results: A total of 40 ENL patients were studied. The mean age of the patients was 33.10±12.23 years, male (70%), high school (75%), and not working (95%). The degree of severity based on mild EESS was more dominant than severe, namely 57.5% vs 42.5%, respectively. The median IL6 level was 64.65±34.06 in ENL patients and was higher in severe compared with mild EESS, namely 105.18±24.14 versus 50.08±16.84, respectively (p=0.103, p=0.167, respectively). There was a very strong and significant positive correlation between serum IL6 levels and EESS (r: 0.813 and p<0.05). Conclusion: There was a correlation between serum IL6 levels and EESS. Further study is needed in measuring serum IL6 levels to detect early severity of ENL.
Elliot Eichen, Arvind Aradhya, Ljiljana Simic
Yujie Fu, Xiaobo Chen, Yijie Wang et al.
Farzane Tajidini
To provide the reader with a historical perspective on cancer classification approaches, we first discuss the fundamentals of the area of cancer diagnosis in this article, including the processes of cancer diagnosis and the standard classification methods employed by clinicians. Current methods for cancer diagnosis are deemed ineffective, calling for new and more intelligent approaches.
Clément Bled, François Pitié
As modern image denoiser networks have grown in size, their reported performance in popular real noise benchmarks such as DND and SIDD have now long outperformed classic non-deep learning denoisers such as Wiener and Wavelet-based methods. In this paper, we propose to revisit the Wiener filter and re-assess its potential performance. We show that carefully considering the implementation of the Wiener filter can yield similar performance to popular networks such as DnCNN.
Xiaoqian Wang, Cheng Wang, Yuqian Cai et al.
Kevin Ginsburger
Due to the limitation of available labeled data, medical image segmentation is a challenging task for deep learning. Traditional data augmentation techniques have been shown to improve segmentation network performances by optimizing the usage of few training examples. However, current augmentation approaches for segmentation do not tackle the strong texture bias of convolutional neural networks, observed in several studies. This work shows on the MoNuSeg dataset that style augmentation, which is already used in classification tasks, helps reducing texture over-fitting and improves segmentation performance.
Saeed Ranjbar Alvar, Ivan V. Bajić
This document describes a noise generator that simulates realistic noise found in smartphone cameras. The generator simulates Poissonian-Gaussian noise whose parameters have been estimated on the Smartphone Image Denoising Dataset (SIDD). The generator is available online, and is currently being used in compressed-domain denoising exploration experiments in JPEG AI.
Marcos Faundez-Zanuy, Xavi Domingo-Reguant
This paper applies the quadtree structure for image coding. The goal is to adapt the block size and thus to increase the compression ratio (without reducing SNR). Also, the computational time is not significatively increased. It has been applied to Block Truncation Coding of still images, and motion vector coding (interframe). An inter/intraframe application is also discussed.
Ye-fei Tian, Rui-jin Liao, Saeid Gholami Farkoush
Jifeng Liu, Yao Zhou, Yiying Niu et al.
Ashkan Esmaeili
Deep compressed sensing assumes the data has sparse representation in a latent space, i.e., it is intrinsically of low-dimension. The original data is assumed to be mapped from a low-dimensional space through a low-to-high-dimensional generator. In this work, we propound how to design such a low-to-high dimensional deep learning-based generator suiting for compressed sensing, while satisfying robustness to universal adversarial perturbations in the latent domain. We also justify why the noise is considered in the latent space. The work is also buttressed with theoretical analysis on the robustness of the trained generator to adversarial perturbations. Experiments on real-world datasets are provided to substantiate the efficacy of the proposed \emph{generative model adversarial training for deep compressed sensing.}
Yongming Jing, Xuxia Li, Lizhang Cong et al.
Manob Das, Arijit Das
Soren Nelson, Rajesh Menon
The thinnest possible camera is achieved by removing all optics, leaving only the image sensor. We train deep neural networks to perform multi-class detection and binary classification (with accuracy of 92%) on optics-free images without the need for anthropocentric image reconstructions. Inferencing from optics-free images has the potential for enhanced privacy and power efficiency.
Misgina Tsighe Hagos
Introducing automated Diabetic Retinopathy (DR) diagnosis into Ethiopia is still a challenging task, despite recent reports that present trained Deep Learning (DL) based DR classifiers surpassing manual graders. This is mainly because of the expensive cost of conventional retinal imaging devices used in DL based classifiers. Current approaches that provide mobile based binary classification of DR, and the way towards a cheaper and offline multi-class classification of DR will be discussed in this paper.
Aniket Maurya
Recent developments in medical imaging with Deep Learning presents evidence of automated diagnosis and prognosis. It can also be a complement to currently available diagnosis methods. Deep Learning can be leveraged for diagnosis, severity prediction, intubation support prediction and many similar tasks. We present prediction of intubation support requirement for patients from the Chest X-ray using Deep representation learning. We release our source code publicly at https://github.com/aniketmaurya/covid-research.
Jun Ma
Loss functions are one of the crucial ingredients in deep learning-based medical image segmentation methods. Many loss functions have been proposed in existing literature, but are studied separately or only investigated with few other losses. In this paper, we present a systematic taxonomy to sort existing loss functions into four meaningful categories. This helps to reveal links and fundamental similarities between them. Moreover, we explore the relationship between the traditional region-based and the more recent boundary-based loss functions. The PyTorch implementations of these loss functions are publicly available at \url{https://github.com/JunMa11/SegLoss}.
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