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      UAV-GESTURE: A Dataset for UAV Control and Gesture Recognition

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          Abstract

          Current UAV-recorded datasets are mostly limited to action recognition and object tracking, whereas the gesture signals datasets were mostly recorded in indoor spaces. Currently, there is no outdoor recorded public video dataset for UAV commanding signals. Gesture signals can be effectively used with UAVs by leveraging the UAVs visual sensors and operational simplicity. To fill this gap and enable research in wider application areas, we present a UAV gesture signals dataset recorded in an outdoor setting. We selected 13 gestures suitable for basic UAV navigation and command from general aircraft handling and helicopter handling signals. We provide 119 high-definition video clips consisting of 37151 frames. The overall baseline gesture recognition performance computed using Pose-based Convolutional Neural Network (P-CNN) is 91.9 %. All the frames are annotated with body joints and gesture classes in order to extend the dataset's applicability to a wider research area including gesture recognition, action recognition, human pose recognition and situation awareness.

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          Most cited references17

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          Towards Understanding Action Recognition

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            A database for fine grained activity detection of cooking activities

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              Spatio-temporal relationship match: Video structure comparison for recognition of complex human activities

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                Author and article information

                Journal
                08 January 2019
                Article
                1901.02602
                5051fa7d-b818-4805-afb8-d2d2fbdafbc6

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                12 pages, 4 figures, UAVision workshop, ECCV, 2018
                cs.LG cs.CV cs.HC stat.ML

                Computer vision & Pattern recognition,Machine learning,Artificial intelligence,Human-computer-interaction

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