ROLGAug 30, 2020

Action similarity judgment based on kinematic primitives

arXiv:2008.13176v1
Originality Synthesis-oriented
AI Analysis

This addresses the problem of understanding human action perception for developmental robotics and cognitive science, but it is incremental as it builds on existing kinematic models.

The study investigated whether a computational model using kinematic primitives could judge action similarity as accurately as humans, finding that both achieved high accuracy, though the model had more false hits and bias.

Understanding which features humans rely on -- in visually recognizing action similarity is a crucial step towards a clearer picture of human action perception from a learning and developmental perspective. In the present work, we investigate to which extent a computational model based on kinematics can determine action similarity and how its performance relates to human similarity judgments of the same actions. To this aim, twelve participants perform an action similarity task, and their performances are compared to that of a computational model solving the same task. The chosen model has its roots in developmental robotics and performs action classification based on learned kinematic primitives. The comparative experiment results show that both the model and human participants can reliably identify whether two actions are the same or not. However, the model produces more false hits and has a greater selection bias than human participants. A possible reason for this is the particular sensitivity of the model towards kinematic primitives of the presented actions. In a second experiment, human participants' performance on an action identification task indicated that they relied solely on kinematic information rather than on action semantics. The results show that both the model and human performance are highly accurate in an action similarity task based on kinematic-level features, which can provide an essential basis for classifying human actions.

Foundations

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