Commands 4 Autonomous Vehicles (C4AV) Workshop Summary

September 18, 2020 ยท Entered Twilight ยท ๐Ÿ› ECCV Workshops

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Repo contents: .dockerignore, .gitignore, README.md, aicrowd.json, apt.txt, assets, evaluator, fingerprint_predict.py, java_random_predict.py, predict.py, random_predict.py, requirements.txt, run.sh, train.py

Authors Thierry Deruyttere, Simon Vandenhende, Dusan Grujicic, Yu Liu, Luc Van Gool, Matthew Blaschko, Tinne Tuytelaars, Marie-Francine Moens arXiv ID 2009.08792 Category cs.CV: Computer Vision Cross-listed cs.AI Citations 6 Venue ECCV Workshops Repository https://github.com/AIcrowd/learning-to-smell-starter-kit โญ 10 Last Checked 5 days ago
Abstract
The task of visual grounding requires locating the most relevant region or object in an image, given a natural language query. So far, progress on this task was mostly measured on curated datasets, which are not always representative of human spoken language. In this work, we deviate from recent, popular task settings and consider the problem under an autonomous vehicle scenario. In particular, we consider a situation where passengers can give free-form natural language commands to a vehicle which can be associated with an object in the street scene. To stimulate research on this topic, we have organized the \emph{Commands for Autonomous Vehicles} (C4AV) challenge based on the recent \emph{Talk2Car} dataset (URL: https://www.aicrowd.com/challenges/eccv-2020-commands-4-autonomous-vehicles). This paper presents the results of the challenge. First, we compare the used benchmark against existing datasets for visual grounding. Second, we identify the aspects that render top-performing models successful, and relate them to existing state-of-the-art models for visual grounding, in addition to detecting potential failure cases by evaluating on carefully selected subsets. Finally, we discuss several possibilities for future work.
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