Evaluation of Real-Time Performance for BGSLibrary Algorithms: A Case Study on Traffic Surveillance Video

Video surveillance systems have been used in various applications such as traffic monitoring, detecting military threats and public safety. In this study, we evaluate real-time performance for BGSLibrary (Background Subtraction Library) algorithms on well-known datasets, which are Background Models Challenge (BMC) and ChangeDetection.

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