Search Results for author: Mohamed Chaabane

Found 5 papers, 3 papers with code

DEFT: Detection Embeddings for Tracking

1 code implementation3 Feb 2021 Mohamed Chaabane, Peter Zhang, J. Ross Beveridge, Stephen O'Hara

DEFT has comparable accuracy and speed to the top methods on 2D online tracking leaderboards while having significant advantages in robustness when applied to more challenging tracking data.

3D Multi-Object Tracking Multiple Object Tracking +3

A Pose Proposal and Refinement Network for Better Object Pose Estimation

no code implementations11 Apr 2020 Ameni Trabelsi, Mohamed Chaabane, Nathaniel Blanchard, Ross Beveridge

Our approach is composed of 2 main components: the first component classifies the objects in the input image and proposes an initial 6D pose estimate through a multi-task, CNN-based encoder/multi-decoder module.

6D Pose Estimation 6D Pose Estimation using RGB +1

Looking Ahead: Anticipating Pedestrians Crossing with Future Frames Prediction

no code implementations20 Oct 2019 Mohamed Chaabane, Ameni Trabelsi, Nathaniel Blanchard, Ross Beveridge

Our end-to-end model consists of two stages: the first stage is an encoder/decoder network that learns to predict future video frames.

Action Recognition Activity Recognition In Videos +3

Comprehensive Evaluation of Deep Learning Architectures for Prediction of DNA/RNA Sequence Binding Specificities

2 code implementations29 Jan 2019 Ameni Trabelsi, Mohamed Chaabane, Asa Ben Hur

For this purpose, we present deepRAM, an end-to-end deep learning tool that provides an implementation of novel and previously proposed architectures; its fully automatic model selection procedure allows us to perform a fair and unbiased comparison of deep learning architectures.

Automatic Machine Learning Model Selection Model Selection +1

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