AcTrak: Controlling a Steerable Surveillance Camera using Reinforcement Learning

Author:

Fahim Abdulrahman1ORCID,Papalexakis Evangelos1ORCID,Krishnamurthy Srikanth V.1ORCID,K. Roy Chowdhury Amit1ORCID,Kaplan Lance2ORCID,Abdelzaher Tarek3ORCID

Affiliation:

1. University of California, Riverside, California, USA

2. DEVCOM Army Research Laboratory, USA

3. University of Illinois at Urbana Champaign, USA

Abstract

Steerable cameras that can be controlled via a network, to retrieve telemetries of interest have become popular. In this paper, we develop a framework called AcTrak , to automate a camera’s motion to appropriately switch between (a) zoom ins on existing targets in a scene to track their activities, and (b) zoom out to search for new targets arriving to the area of interest. Specifically, we seek to achieve a good trade-off between the two tasks, i.e., we want to ensure that new targets are observed by the camera before they leave the scene, while also zooming in on existing targets frequently enough to monitor their activities. There exist prior control algorithms for steering cameras to optimize certain objectives; however, to the best of our knowledge, none have considered this problem, and do not perform well when target activity tracking is required. AcTrak  automatically controls the camera’s PTZ configurations using reinforcement learning (RL ), to select the best camera position given the current state. Via simulations using real datasets, we show that AcTrak detects newly arriving targets 30% faster than a non-adaptive baseline and rarely misses targets, unlike the baseline which can miss up to 5% of the targets. We also implement AcTrak to control a real camera and demonstrate that in comparison with the baseline, it acquires about more high resolution images of targets.

Funder

DEVCOM Army Research Laboratory

NSF CPS

NSF CNS

ONR

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Control and Optimization,Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference54 articles.

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2. Andy Penfold. [n. d.]. How IoT is reshaping the future of Video Surveillance. https://www.securityandsafetythings.com/insights/iot-reshaping-future-surveillance.

3. Sonali P. Gulve, Suchitra A. Khoje, and Prajakta Pardeshi. 2017. Implementation of IoT-based smart video surveillance system. In Computational Intelligence in Data Mining. Springer, 771–780.

4. Avipas. [n. d.]. AViPAS model AV-1081 manual. https://e7aba150-670b-4b8b-9a25-311a84251d5f.filesusr.com/ugd/6b6a18_34ff6afc20914be9943327dc3f5a6211.pdf.

5. Sony. [n. d.]. Remotely controlled PTZ color video camera with IP streaming. https://pro.sony/ue_US/products/ptz-network-cameras/srg-300se.

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