2014 IEEE International Conference on Robotics and Automation (ICRA) 2014
DOI: 10.1109/icra.2014.6907734
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Behavior estimation for a complete framework for human motion prediction in crowded environments

Abstract: Abstract-In the present work, we propose and validate a complete probabilistic framework for human motion prediction in urban or social environments. Additionally, we formulate a powerful and useful tool: the human motion behavior estimator. Three different basic behaviors have been detected: Aware, Balanced and Unaware. Our approach is based on the Social Force Model (SFM) and the intentionality prediction BHMIP. The main contribution of the present work is to make use of the behavior estimator for formulatin… Show more

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Cited by 51 publications
(43 citation statements)
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“…This is because the addition of a penalty breaks Fig. 4: Norm inducing reward function (depiction of (10)- (12)). The red agent is penalized if there is another agent in the blue, green or gray shaded regions, corresponding to overtaking, passing and crossing, respectively.…”
Section: A Inducing Social Normsmentioning
confidence: 99%
“…This is because the addition of a penalty breaks Fig. 4: Norm inducing reward function (depiction of (10)- (12)). The red agent is penalized if there is another agent in the blue, green or gray shaded regions, corresponding to overtaking, passing and crossing, respectively.…”
Section: A Inducing Social Normsmentioning
confidence: 99%
“…During experimentation in genuine situations, such module observed high fluctuation in human movement and it filled in as the inspiration to build up the present work. Given the high fluctuation of human conduct, it is hard to precisely anticipate human movement utilizing a similar arrangement of parameters, since high fluctuation of human conduct shows up a reasonable distinction amongst expectations and perceptions [40].…”
Section: Observation On Methods On Anomaly Detectionmentioning
confidence: 99%
“…Cues of the target agent include: 1.1. motion state such as position and possibly velocity (e.g., Bennewitz et al, 2005; Bera et al, 2016; Elfring et al, 2014; Ferrer and Sanfeliu, 2014; Karasev et al, 2016; Kitani et al, 2012; Kooij et al, 2019; Kucner et al, 2017; Kuderer et al, 2012; Pellegrini et al, 2009; Trautman and Krause, 2010; Ziebart et al, 2009); 1.2. articulated pose such as head orientation (e.g., Hasan et al, 2018; Kooij et al, 2019, 2014; Roth et al, 2016; Unhelkar et al, 2015) or fullbody pose (Mínguez et al, 2018; Quintero et al, 2014); 1.3.…”
Section: Taxonomymentioning
confidence: 99%