Search Results for author: Amir Jamaludin

Found 11 papers, 3 papers with code

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1 code implementation8 May 2017 Joon Son Chung, Amir Jamaludin, Andrew Zisserman

To achieve this we propose an encoder-decoder CNN model that uses a joint embedding of the face and audio to generate synthesised talking face video frames.

Unconstrained Lip-synchronization

Self-Supervised Multi-Modal Alignment for Whole Body Medical Imaging

1 code implementation14 Jul 2021 Rhydian Windsor, Amir Jamaludin, Timor Kadir, Andrew Zisserman

This paper explores the use of self-supervised deep learning in medical imaging in cases where two scan modalities are available for the same subject.

A Deep Learning Approach to Private Data Sharing of Medical Images Using Conditional GANs

1 code implementation24 Jun 2021 Hanxi Sun, Jason Plawinski, Sajanth Subramaniam, Amir Jamaludin, Timor Kadir, Aimee Readie, Gregory Ligozio, David Ohlssen, Mark Baillie, Thibaud Coroller

An alternative to anonymization is sharing a synthetic dataset that bears a behaviour similar to the real data but preserves privacy.

Self-Supervised Learning for Spinal MRIs

no code implementations1 Aug 2017 Amir Jamaludin, Timor Kadir, Andrew Zisserman

We show that the performance of the pre-trained CNN on the supervised classification task is (i) superior to that of a network trained from scratch; and (ii) requires far fewer annotated training samples to reach an equivalent performance to that of the network trained from scratch.

Classification General Classification +1

The Ladder Algorithm: Finding Repetitive Structures in Medical Images by Induction

no code implementations30 Jan 2020 Rhydian Windsor, Amir Jamaludin

In this paper we introduce the Ladder Algorithm; a novel recurrent algorithm to detect repetitive structures in natural images with high accuracy using little training data.

SpineNetV2: Automated Detection, Labelling and Radiological Grading Of Clinical MR Scans

no code implementations3 May 2022 Rhydian Windsor, Amir Jamaludin, Timor Kadir, Andrew Zisserman

This technical report presents SpineNetV2, an automated tool which: (i) detects and labels vertebral bodies in clinical spinal magnetic resonance (MR) scans across a range of commonly used sequences; and (ii) performs radiological grading of lumbar intervertebral discs in T2-weighted scans for a range of common degenerative changes.

Body Detection

Context-Aware Transformers For Spinal Cancer Detection and Radiological Grading

no code implementations27 Jun 2022 Rhydian Windsor, Amir Jamaludin, Timor Kadir, Andrew Zisserman

(iii) We also apply SCT to an existing problem: radiological grading of inter-vertebral discs (IVDs) in lumbar MR scans for common degenerative changes. We show that by considering the context of vertebral bodies in the image, SCT improves the accuracy for several gradings compared to previously published model.

Vision-Language Modelling For Radiological Imaging and Reports In The Low Data Regime

no code implementations30 Mar 2023 Rhydian Windsor, Amir Jamaludin, Timor Kadir, Andrew Zisserman

This paper explores training medical vision-language models (VLMs) -- where the visual and language inputs are embedded into a common space -- with a particular focus on scenarios where training data is limited, as is often the case in clinical datasets.

Image Retrieval Language Modelling +1

Contouring by Unit Vector Field Regression

no code implementations26 May 2023 Amir Jamaludin, Sarim Ather, Timor Kadir, Rhydian Windsor

This work introduces a simple deep-learning based method to delineate contours by `walking' along learnt unit vector fields.

regression

Predicting Spine Geometry and Scoliosis from DXA Scans

no code implementations15 Nov 2023 Amir Jamaludin, Timor Kadir, Emma Clark, Andrew Zisserman

Our objective in this paper is to estimate spine curvature in DXA scans.

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