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Multiple Object Tracking by Trajectory Map Regression with Temporal Priors Embedding

Xingyu Wan, Sanping Zhou, Jinjun Wang, Rongye Meng

202119 citationsDOI

Abstract

Prevailing Multiple Object Tracking (MOT) works following the Tracking-by-Detection (TBD) paradigm pay most attention to either object detection in a first step or data association in a second step. In this paper, we approach the MOT problem from a different perspective by directly obtaining the embedded spatial-temporal information of trajectories from raw video data. For the purpose we propose a joint trajectory locating and attributes encoding framework for real-time, on-line MOT. We firstly introduce a trajectory attribute representation scheme designed for each tracked target (instead of object) where the extracted Trajectory Map (TM) encodes the spatial-temporal attributes of a trajectory across a window of consecutive video frames. Next we present a Temporal Priors Embedding (TPE) methodology to infer these attributes with a logical reasoning strategy based on long-term feature dynamics. The proposed MOT framework projects multiple attributes of tracked targets, e.g., presence, enter/exit, location, scale, motion, etc. into a continuous TM to perform one-shot regression for real-time MOT. Experimental results show that, our proposed video-based method runs at 33 FPS and is more accurate and robust as compared to the detection-based tracking methods and a few other State-of-the- Art (SOTA) approaches on MOT16/17/20 benchmarks.

Topics & Concepts

Computer scienceTrajectoryArtificial intelligenceVideo trackingComputer visionEmbeddingObject (grammar)Object detectionPrior probabilityTracking (education)Feature (linguistics)Pattern recognition (psychology)PedagogyPhysicsLinguisticsBayesian probabilityPsychologyPhilosophyAstronomyVideo Surveillance and Tracking MethodsHuman Pose and Action RecognitionFire Detection and Safety Systems