scispace - formally typeset
D

Deepti Mittal

Researcher at Thapar University

Publications -  48
Citations -  776

Deepti Mittal is an academic researcher from Thapar University. The author has contributed to research in topics: Fundus (eye) & Diabetic retinopathy. The author has an hindex of 12, co-authored 45 publications receiving 486 citations. Previous affiliations of Deepti Mittal include Indian Institute of Technology Roorkee.

Papers
More filters
Journal ArticleDOI

A deep learning approach to detect Covid-19 coronavirus with X-Ray images.

TL;DR: An alternative diagnostic tool to detect COVID-19 cases utilizing available resources and advanced deep learning techniques is proposed in this work, and the efficacy of proposed method in present need of time is shown.
Journal ArticleDOI

Neural network based focal liver lesion diagnosis using ultrasound images

TL;DR: A computer-aided diagnostic system to assist radiologists in identifying focal liver lesions in B-mode ultrasound images can be used to discriminate focal liver diseases such as Cyst, Hemangioma, Hepatocellular carcinoma and Metastases, along with Normal liver.
Journal ArticleDOI

A generalized method for the segmentation of exudates from pathological retinal fundus images

TL;DR: A generalized exudates segmentation method to assist ophthalmologists for timely treatment and effective planning in the diagnosis of diabetic retinopathy is developed, which outperforms other existing methods on a diversified database having 1307 retinal fundus images of varying characteristics.
Journal ArticleDOI

Enhancement of the ultrasound images by modified anisotropic diffusion method

TL;DR: To enhance visual quality of ultrasound images, nonquadratic regularization is incorporated with MSRAD method and accordingly changes in parameter settings have been made.
Journal ArticleDOI

Computer-Aided Characterization and Diagnosis of Diffuse Liver Diseases Based on Ultrasound Imaging A Review

TL;DR: In this paper, a review of computer-aided diagnosis of diffuse liver diseases using ultrasound images is presented, and a concise tabular summary comparing image database, features extraction, feature selection, and classification algorithms is also exhibited.