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<i>VATLD</i>: A <i>V</i>isual <i>A</i>nalytics System to Assess, Understand and Improve <i>T</i>raffic <i>L</i>ight <i>D</i>etection

Liang Gou, Lincan Zou, Nanxiang Li, Michael Hofmann, Arvind Kumar Shekar, Axel Wendt, Liu Ren

2020IEEE Transactions on Visualization and Computer Graphics69 citationsDOI

Abstract

Traffic light detection is crucial for environment perception and decision-making in autonomous driving. State-of-the-art detectors are built upon deep Convolutional Neural Networks (CNNs) and have exhibited promising performance. However, one looming concern with CNN based detectors is how to thoroughly evaluate the performance of accuracy and robustness before they can be deployed to autonomous vehicles. In this work, we propose a visual analytics system, VATLD, equipped with a disentangled representation learning and semantic adversarial learning, to assess, understand, and improve the accuracy and robustness of traffic light detectors in autonomous driving applications. The disentangled representation learning extracts data semantics to augment human cognition with human-friendly visual summarization, and the semantic adversarial learning efficiently exposes interpretable robustness risks and enables minimal human interaction for actionable insights. We also demonstrate the effectiveness of various performance improvement strategies derived from actionable insights with our visual analytics system, VATLD, and illustrate some practical implications for safety-critical applications in autonomous driving.

Topics & Concepts

Computer scienceRobustness (evolution)Convolutional neural networkArtificial intelligenceAnalyticsSituation awarenessVisual analyticsMachine learningDeep learningAutomatic summarizationVisualizationAdversarial systemHuman–computer interactionData scienceAerospace engineeringChemistryEngineeringBiochemistryGeneVideo Surveillance and Tracking MethodsAdvanced Neural Network ApplicationsImage Enhancement Techniques
<i>VATLD</i>: A <i>V</i>isual <i>A</i>nalytics System to Assess, Understand and Improve <i>T</i>raffic <i>L</i>ight <i>D</i>etection | Litcius