Litcius/Paper detail

Near-Online Tracking With Co-Occurrence Constraints in Blockchain-Based Edge Computing

Hao Sheng, Shuai Wang, Yang Zhang, Dongxiao Yu, Xiuzhen Cheng, Weifeng Lyu, Zhang Xiong

2020IEEE Internet of Things Journal72 citationsDOI

Abstract

Multiobject tracking is a basic task in video analysis. Due to the strict requirements on efficiency and resource consumption, most of the applications on edge devices are online or near-online methods. Besides motion modeling, appearance information is also widely used for tracking. However, the influence of occlusion is usually ignored. In this article, spatial-temporal co-occurrence constraints (STCCs) features are introduced to resist occlusions by exploring the rich spatial and temporal information of tracklets. In addition, a novel blockchain-based near-online framework called co-occurrence constraints tracklet tracker (CoCTs) is proposed for cross-camera tracking. It inherits the advantages of the blockchain technology in sharing information. Based on blockchain, an efficient association mechanism and a reliable information sharing method are introduced. Experimental results show that CoCT performs high computational efficiency and low resource consumption. In the edge computing environment, it achieves real-time performance on cross-camera tracking. On the MOT17 benchmark, our method shows the state-of-the-art results compared with other online trackers.

Topics & Concepts

Computer scienceBitTorrent trackerBlockchainBenchmark (surveying)Edge computingTracking (education)Enhanced Data Rates for GSM EvolutionVideo trackingReal-time computingTask (project management)Artificial intelligenceComputational resourceComputer visionDistributed computingEye trackingComputational complexity theoryVideo processingAlgorithmComputer securityPedagogyEconomicsPsychologyManagementGeographyGeodesyVideo Surveillance and Tracking MethodsVisual Attention and Saliency DetectionImage and Video Quality Assessment