1. Trajectory Saliency Detection Using Consistency-Oriented Latent Codes From a Recurrent Auto-Encoder.
- Author
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Maczyta, Leo, Bouthemy, Patrick, and Le Meur, Olivier
- Subjects
- *
GENERATIVE adversarial networks , *RAILROAD stations - Abstract
In this paper, we are concerned with the detection of progressive dynamic saliency from video sequences. More precisely, we are interested in saliency related to motion and likely to appear progressively over time. It can be relevant to trigger alarms, to dedicate additional processing or to detect specific events. Trajectories represent the best way to support progressive dynamic saliency detection. Accordingly, we will talk about trajectory saliency. A trajectory will be qualified as salient if it deviates from normal trajectories that share a common motion pattern related to a given context. First, we need a compact while discriminative representation of trajectories. We adopt a (nearly) unsupervised learning-based approach. The latent code estimated by a recurrent auto-encoder provides the desired representation. In addition, we enforce consistency for normal (similar) trajectories through the auto-encoder loss function. The distance of the trajectory code to a prototype code accounting for normality is the means to detect salient trajectories. We validate our trajectory saliency detection method on synthetic and real trajectory datasets, and highlight the contributions of its different components. We compare our method favourably to existing methods on several saliency configurations constructed from the publicly available large dataset of pedestrian trajectories acquired in a railway station. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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