Recognising complex activities with histograms of relative tracklets

نویسندگان

  • Sebastian Stein
  • Stephen J. McKenna
چکیده

One approach to the recognition of complex human activities is to use feature descriptors that encode visual interactions by describing properties of local visual features with respect to trajectories of tracked objects. We explore an example of such an approach in which dense tracklets are described relative to multiple reference trajectories, providing a rich representation of complex interactions between objects of which only a subset can be tracked. Specifically, we report experiments in which reference trajectories are provided by tracking inertial sensors in a food preparation scenario. Additionally, we provide baseline results for HOG, HOF and MBH, and combine these features with others for multi-modal recognition. The proposed histograms of relative tracklets (RETLETS) showed better activity recognition performance than dense tracklets, HOG, HOF, MBH, or their combination. Our comparative evaluation of features from accelerometers and video highlighted a performance gap between visual and accelerometer-based motion features and showed a substantial performance gain when combining features from these sensor modalities. A considerable further performance gain was observed in combination with RETLETS and reference

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عنوان ژورنال:
  • Computer Vision and Image Understanding

دوره 154  شماره 

صفحات  -

تاریخ انتشار 2017