Search Results for author: Taylor Mordan

Found 11 papers, 10 papers with code

Toward Reliable Human Pose Forecasting with Uncertainty

1 code implementation13 Apr 2023 Saeed Saadatnejad, Mehrshad Mirmohammadi, Matin Daghyani, Parham Saremi, Yashar Zoroofchi Benisi, Amirhossein Alimohammadi, Zahra Tehraninasab, Taylor Mordan, Alexandre Alahi

Recently, there has been an arms race of pose forecasting methods aimed at solving the spatio-temporal task of predicting a sequence of future 3D poses of a person given a sequence of past observed ones.

Human Pose Forecasting

A generic diffusion-based approach for 3D human pose prediction in the wild

1 code implementation11 Oct 2022 Saeed Saadatnejad, Ali Rasekh, Mohammadreza Mofayezi, Yasamin Medghalchi, Sara Rajabzadeh, Taylor Mordan, Alexandre Alahi

Predicting 3D human poses in real-world scenarios, also known as human pose forecasting, is inevitably subject to noisy inputs arising from inaccurate 3D pose estimations and occlusions.

Denoising Human Pose Forecasting +2

Pedestrian Stop and Go Forecasting with Hybrid Feature Fusion

2 code implementations4 Mar 2022 Dongxu Guo, Taylor Mordan, Alexandre Alahi

Considering the lack of suitable existing datasets for it, we release TRANS, a benchmark for explicitly studying the stop and go behaviors of pedestrians in urban traffic.

Autonomous Driving motion prediction +1

A Shared Representation for Photorealistic Driving Simulators

1 code implementation9 Dec 2021 Saeed Saadatnejad, Siyuan Li, Taylor Mordan, Alexandre Alahi

We build on successful cGAN models to propose a new semantically-aware discriminator that better guides the generator.

Autonomous Vehicles Image Generation +1

Do Pedestrians Pay Attention? Eye Contact Detection in the Wild

1 code implementation8 Dec 2021 Younes Belkada, Lorenzo Bertoni, Romain Caristan, Taylor Mordan, Alexandre Alahi

In urban or crowded environments, humans rely on eye contact for fast and efficient communication with nearby people.

Autonomous Vehicles Contact Detection +2

TTT++: When Does Self-Supervised Test-Time Training Fail or Thrive?

1 code implementation NeurIPS 2021 Yuejiang Liu, Parth Kothari, Bastien Van Delft, Baptiste Bellot-Gurlet, Taylor Mordan, Alexandre Alahi

In this work, we first provide an in-depth look at its limitations and show that TTT can possibly deteriorate, instead of improving, the test-time performance in the presence of severe distribution shifts.

Contrastive Learning Self-Supervised Learning

Detecting 32 Pedestrian Attributes for Autonomous Vehicles

1 code implementation4 Dec 2020 Taylor Mordan, Matthieu Cord, Patrick Pérez, Alexandre Alahi

By increasing the number of attributes jointly learned, we highlight an issue related to the scales of gradients, which arises in MTL with numerous tasks.

Attribute Autonomous Driving +1

MonStereo: When Monocular and Stereo Meet at the Tail of 3D Human Localization

2 code implementations25 Aug 2020 Lorenzo Bertoni, Sven Kreiss, Taylor Mordan, Alexandre Alahi

Monocular and stereo visions are cost-effective solutions for 3D human localization in the context of self-driving cars or social robots.

Self-Driving Cars

Deformable Part-based Fully Convolutional Network for Object Detection

no code implementations19 Jul 2017 Taylor Mordan, Nicolas Thome, Matthieu Cord, Gilles Henaff

Existing region-based object detectors are limited to regions with fixed box geometry to represent objects, even if those are highly non-rectangular.

Object object-detection +1

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