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Robot House Human Activity Recognition Dataset

Mohammad Hossein Bamorovat Abadi, Mohammad Alashti, Patrick Holthaus, Catherine Menon, Farshid Amirabdollahian

Year
2021
Citations
2

Abstract

—Human activity recognition is one of the most challenging tasks in computer vision. State-of-the art approaches such as deep learning techniques thereby often rely on large labelled datasets of human activities. However, currently available datasets are suboptimal for learning human activities in companion robotics scenarios at home, for example, missing crucial perspectives. With this as a consideration, we present the University of Hertfordshire Robot House Human Activity Recognition Dataset (RH-HAR-1). It contains RGB videos of a human engaging in daily activities, taken from four different cameras. Importantly, this dataset contains two non-standard perspectives: a ceiling-mounted fisheye camera and a mobile robot’s view. In the first instance, RH-HAR-1 covers five daily activities with a total of more than 10,000 videos.

Keywords

Activity recognitionArtificial intelligenceComputer scienceCeiling (cloud)RoboticsRobotDeep learningHuman–robot interactionRGB color modelMobile robot

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