Litcius/Paper detail

SUTD-TrafficQA: A Question Answering Benchmark and an Efficient Network for Video Reasoning over Traffic Events

Li Xu, He Huang, Jun Liu

202179 citationsDOI

Abstract

Traffic event cognition and reasoning in videos is an important task that has a wide range of applications in intelligent transportation, assisted driving, and autonomous vehicles. In this paper, we create a novel dataset, SUTD-TrafficQA (Traffic Question Answering), which takes the form of video QA based on the collected 10,080 in-the-wild videos and annotated 62,535 QA pairs, for benchmarking the cognitive capability of causal inference and event understanding models in complex traffic scenarios. Specifically, we propose 6 challenging reasoning tasks corresponding to various traffic scenarios, so as to evaluate the reasoning capability over different kinds of complex yet practical traffic events. Moreover, we propose Eclipse, a novel Efficient glimpse network via dynamic inference, in order to achieve computation-efficient and reliable video reasoning. The experiments show that our method achieves superior performance while reducing the computation cost significantly. The project page: https://github.com/SUTDCV/SUTD-TrafficQA.

Topics & Concepts

Computer scienceInferenceBenchmark (surveying)Semantic reasonerBenchmarkingEvent (particle physics)Task (project management)Question answeringComputationEclipseArtificial intelligenceCognitionMachine learningProgramming languageEconomicsPhysicsQuantum mechanicsManagementGeodesyBusinessGeographyMarketingAstronomyBiologyNeuroscienceMultimodal Machine Learning ApplicationsHuman Pose and Action RecognitionAnomaly Detection Techniques and Applications