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LANDER: Visual Analysis of Activity and Uncertainty in Surveillance Video | IEEE Journals & Magazine | IEEE Xplore

LANDER: Visual Analysis of Activity and Uncertainty in Surveillance Video


Abstract:

Vision algorithms face challenges of limited visual presentation and unreliability in pedestrian activity assessment. In this article, we introduce LANDER, an interactive...Show More

Abstract:

Vision algorithms face challenges of limited visual presentation and unreliability in pedestrian activity assessment. In this article, we introduce LANDER, an interactive analysis system for visual exploration of pedestrian activity and uncertainty in surveillance videos. This visual analytics system focuses on three common categories of uncertainties in object tracking and action recognition. LANDER offers an overview visualization of activity and uncertainty, along with spatio-temporal exploration views closely associated with the scene. Expert evaluation and user study indicate that LANDER outperforms traditional video exploration in data presentation and analysis workflow. Specifically, compared to the baseline method, it excels in reducing retrieval time (p<  0.01), enhancing uncertainty identification (p<  0.05), and improving the user experience (p<  0.05).
Published in: IEEE Transactions on Human-Machine Systems ( Volume: 54, Issue: 4, August 2024)
Page(s): 427 - 440
Date of Publication: 24 June 2024

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