51社区黑料

Kumar Abhishek
kabhisadasflkjhhe [at] sdfhsdjaffu [dot] 1432@#$2 ca

I am a PhD student in the at 51社区黑料, where I work as a part of the , under the supervision of .

I defended my MSc Thesis in 2020 on input space augmentation strategies for skin lesion segmentation under the supervision of . My examination committee consisted of Profs. , , and , and my thesis was accepted without any revisions. Previously, I graduated with a Bachelor of Technology in Electronics and Communication Engineering with a focus on Image Processing and Machine Learning from the in 2015. My undergraduate thesis was advised by .

During my undergraduate years, I carried out internships at and CTO Office, . After graduating from IIT Guwahati, I have worked at and .

Resume  |  CV  |   |   | 

Research

I'm interested in computer vision, machine learning, and image processing. At MIAL, I work on applying deep learning methods to medical image analysis. The primary focus of my work has been on skin lesion image analysis.

Journal Publications


Kumar Abhishek, ,
IEEE Data Descriptions, 2026

We curate ISIC MultiAnnot++ (IMA++), a large public multi-annotator dermoscopic skin lesion image segmentation dataset collected from the ISIC Archive.

[Abstract] [BibTeX]

Position Paper


, , Kumar Abhishek,
arXiv, 2025

We analyze the ethical challenges associated with medical image synthesis (MISyn) and a framework of practical recommendations to guide ethical development and use of MISyn methods.

[Abstract] [BibTeX]

Analysis Paper


Kumar Abhishek, ,
Nature Scientific Data, 2025  (People's Choice Award at the 2025 51社区黑料CS Diversity Awards)

We present an in-depth analysis of two popular dermatological image datasets, DermaMNIST and Fitzpatrick17k, uncovering data quality issues: duplicates, data leakage across train-test partitions, mislabeled images, and the absence of a well-defined test partition.

[Abstract] [BibTeX] [Presentation Slides]


, , , Kumar Abhishek, , , , ,   [*: Joint first authors]
Medical Image Analysis, 2024

We propose a framework to synthesize in-the-wild 2D clinical images of skin diseases and provide corresponding annotations for several downstream tasks.

[Abstract] [BibTeX] [Poster]


Kumar Abhishek, Colin J. Brown,
Journal of Big Data, 2024

We propose a generalization of mixup with provably and demonstrably desirable properties that allows convex combinations of more than 2 samples.

[Abstract] [BibTeX]

Review
Paper


Kumar Abhishek*, , , , , , ,   [*: Joint first authors]
Medical Image Analysis, 2023

We review the literature on deep learning-based skin lesion segmentation, evaluating the current research along several dimensions: input data, model design, and evaluation, and discuss their limitations and potential research directions.

[Abstract] [BibTeX] [Interactive Table of Papers]


, , Kumar Abhishek, ,   [*: Joint first authors]
Medical Image Analysis, 2022

We present a deep learning-based approach to detect and track skin lesions on 3D whole-body scans.

[Abstract] [BibTeX]


Kumar Abhishek, ,
Nature Scientific Reports, 2021

We present a deep learning-based approach to predict the clinical management decisions for skin lesions from images without explicitly predicting the underlying diagnosis.

[Abstract] [BibTeX]
Media Coverage: ,

Review
Paper


Kumar Abhishek*, , , ,   [*: Joint first authors]
Artificial Intelligence Review, 2021

We present a comprehensive survey of advances in deep learning-based semantic segmentation of natural and medical images, categorizing the contributions in 6 broad categories, and discuss limitations and potential research directions.

[Abstract] [BibTeX] [Poster]

Review
Paper


, , Kumar Abhishek, , ,
Journal of Neural Engineering, 2020

We review the literature to analyze the most important challenges in the clinical adoption of AI-based methods and present a summary of the recent advances, categorizing them into three broad categories: dealing with limited data volume and annotations, training of deep learning-based models, and the clinical deployment of these models.

[Abstract] [BibTeX]
Conference Publications


Kumar Abhishek, ,
Medical Image Computing and Computer-Assisted Intervention (MICCAI) ISIC Skin Image Analysis Workshop (MICCAI ISIC), 2025  (Best Paper Award | 51社区黑料FAS 3MT Runner-Up | 51社区黑料3MT Finalist | Invited 3MT at University Women's Club of Vancouver)

We show a statistically significant association between inter-annotator agreement (IAA) and the malignancy of skin lesions, and leverage this association to improve lesion diagnosis performance.

[Abstract] [BibTeX] [Presentation Slides]


, Kumar Abhishek, , ,
International Symposium on Biomedical Imaging (IEEE ISBI), 2025  (Best Paper Award)

We present a 3D disentanglement method for PET lesion segmentation that separates disease and healthy anatomical features and employs losses for segmentation, reconstruction, and healthy component plausibility.

[Abstract] [BibTeX] [Presentation Slides]


Kumar Abhishek,
Medical Image Computing and Computer-Assisted Intervention (MICCAI) ISIC Skin Image Analysis Workshop (MICCAI ISIC), 2024

We explore the feasibility of predicting and leveraging skin lesion elevation labels from 2D skin lesion images, and show that incorporating elevation labels as auxiliary inputs to diagnosis models improves the classification performance.

[Abstract] [BibTeX] [Presentation Slides]


Kumar Abhishek, ,
Medical Image Computing and Computer-Assisted Intervention (MICCAI) ISIC Skin Image Analysis Workshop (MICCAI ISIC), 2024  (Best Paper Award)

StyleSeg learns plausible, diverse, and semantically consistent segmentation styles without annotator correspondence, outperforming competing methods while maintaining alignment with annotator preferences.

[Abstract] [BibTeX] [Presentation Slides]


, Kumar Abhishek, , ,
The Society of Nuclear Medicine and Molecular Imaging (SNMMI) Annual Meeting, 2024

We propose PET-Disentangler, a deep learning method that disentangles PET images into disease and healthy anatomical features to improve lesion segmentation accuracy and outperforms standard 3D UNet models.

[Abstract] [BibTeX] [Poster]


Kumar Abhishek, Colin J. Brown,
Medical Imaging with Deep Learning (MIDL) Short Paper, 2023

We present a multi-sample Riemann zeta-weighted mixing-based image augmentation to generate richer and more realistic outputs.

[Abstract] [BibTeX] [Presentation Slides] [Poster]


, Kumar Abhishek,
ISIC Skin Image Analysis Workshop, European Conference on Computer Vision (ECCV), 2022

We propose a skin color transformer, a domain invariant representation learning method, and a new fairness metric for mitigating skin type bias in clinical image classification.

[Abstract] [BibTeX] [Presentation Slides]


, Kumar Abhishek, ,
ISIC Skin Image Analysis Workshop, IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), 2021  (Best Paper Award)

We propose an ensemble of Bayesian FCNs to perform segmentation from multiple (contradictory) annotations and fuse predictions from multiple base models to improve confidence calibration.

[Abstract] [BibTeX] [Presentation Slides]


Kumar Abhishek,
International Symposium on Biomedical Imaging (ISBI), 2021

We propose a new overlap-based loss function for binary segmentation that takes into account the true negative pixels and achieves a better sensitivity-specificity trade-off than the popular Dice loss.

[Abstract] [BibTeX] [Poster]


Kumar Abhishek, ,
ISIC Skin Image Analysis Workshop, IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), 2020

We incorporate information from specific color bands, illumination invariant grayscale images, and shading-attenuated images obtained from RGB dermoscopic images of skin lesions to improve the lesion segmentation.

[Abstract] [BibTeX] [Presentation Slides]


Kumar Abhishek,
Workshop on Simulation and Synthesis in Medical Imaging (SASHIMI), International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI), 2019

We propose a GAN-based synthesis approach for generating realistic skin lesion images from lesion masks, making it an appropriate augmentation strategy for skin lesion segmentation datasets.

[Abstract] [BibTeX] [Poster]


, Kumar Abhishek,
International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI), 2019  (Early Accept)

We propose an input image transformation technique that relies on the gradients of a trained segmentation network to transform the images for improved segmentation performance.

[Abstract] [BibTeX]

PDF
, , Kumar Abhishek, Neha Sharma, ,
IEEE International Conference on Image Processing (ICIP), 2019

We propose an unpaired image-to-image translation algorithm for generating synthetic remote sensing images with different land cover types while preserving the locations and the intensity values of the cloud pixels.

[Abstract] [BibTeX] [Poster]


, Kumar Abhishek, ,
IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), 2019

We propose a non-linear radial basis convolutional feature mapping based adversarial defense that is resilient to gradient and non-gradient based attacks while also not affecting the performance of clean data.

[Abstract] [BibTeX] [Poster]
Pre-prints and Older Publications

Review
Paper


Kumar Abhishek*,   [*: Joint first authors]
arXiv pre-printarXiv:2211.14736, 2020

We review the current literature in attribution-based XAI methods for computer vision, particularly gradient-based, perturbation-based, and contrastive methods for XAI, and discuss the key challenges in developing and evaluating robust XAI methods.

[Abstract] [BibTeX]


Kumar Abhishek, ,   [*: Joint first authors]
arXiv pre-printarXiv:1911.07086, 2019

We propose a new regularization technique which learns to estimate the contribution of the input variables in the final prediction output and can be used as a data augmentation strategy.

[Abstract] [BibTeX]


Kumar Abhishek,
Procedia Computer ScienceVolume 58, 2015

[Abstract] [BibTeX]


Kumar Abhishek, ,
IEEE International Conference on Signal Processing, Informatics, Communication and Energy Systems (SPICES), 2015  (Oral Presentation)

[Abstract] [BibTeX] [Presentation Slides]


Kumar Abhishek, , , , , , ,
IEEE Twentieth National Conference on Communications (NCC), 2014  (Oral Presentation)

[Abstract] [BibTeX] [Presentation Slides]
Theses


Master's Thesis
[Abstract] [BibTeX]


Undergraduate Thesis
[Abstract] [BibTeX]

Service

Teaching Assistant


CMPT 340: Biomedical Computing [Course Outline]
  • Spring 2021
  • Summer 2021
  • Fall 2023
  • Spring 2024
  • Fall 2024
  • Fall 2025
  • Spring 2026

CMPT 419: Special Topics in AI: Biomedical Image Computing [Course Outline]
  • Spring 2025

Organizer


Workshops

Reviewer


Journals
  • Medical Image Analysis (MedIA)
  • IEEE Transactions on Medical Imaging (TMI)
  • Computer Methods and Programs in Biomedicine (CMPB)
  • Computers in Biology and Medicine (CIBM)
  • Computerized Medical Imaging and Graphics (CMIG)
  • Nature Scientific Data (Nat Sci Data)
  • Nature Scientific Reports (Nat Sci Rep)
  • Journal of Nuclear Medicine (JNM)
  • npj Imaging

Conferences and Workshops
  • Medical Image Computing and Computer Assisted Intervention (MICCAI)
  • CVPR/ECCV/MICCAI International Skin Imaging Collaboration (ISIC) Skin Image Analysis Workshop
  • MICCAI EMERGE Workshop
  • Information Processing in Medical Imaging (IPMI)
  • Medical Imaging Meets NeurIPS (MedNeurIPS)

There are two kinds of scientific progress: the methodical experimentation and categorization which gradually extend the boundaries of knowledge, and the revolutionary leap of genius which redefines and transcends those boundaries. Acknowledging our debt to the former, we yearn nonetheless for the latter. - Prokhor Zakharov, Sid Meier's Alpha Centauri


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