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Markerless Body Part Tracking for Action Recognition

Authors: Calderara, Simone; Prati, Andrea; Cucchiara, Rita

Published in: INTERNATIONAL JOURNAL OF MULTIMEDIA INTELLIGENCE AND SECURITY

This paper presents a method for recognising human actions bytracking body parts without using artificial markers. A sophisticated appearance-based tracking … (Read full abstract)

This paper presents a method for recognising human actions bytracking body parts without using artificial markers. A sophisticated appearance-based tracking able to cope with occlusions is exploited to extract a probability map for each moving object. A segmentation technique based on mixture of Gaussians (MoG) is then employed to extract and track significantpoints on this map, corresponding to significant regions on the human silhouette. The evolution of the mixture in time is analysed by transforming it in a sequence of symbols (corresponding to a MoG). The similarity between actions is computed by applying global alignment and dynamic programming techniques to the corresponding sequences and using a variational approximation of the Kullback-Leibler divergence to measure the dissimilarity between two MoGs. Experiments on publicly available datasets and comparison with existing methods are provided.

2011 Articolo su rivista

A Markerless Approach for Consistent Action Recognition in a Multi-camera System

Authors: Calderara, Simone; Prati, Andrea; Cucchiara, Rita

This paper presents a method for recognizing human actions in a multi-camera setup. The proposed method automatically extracts significant points … (Read full abstract)

This paper presents a method for recognizing human actions in a multi-camera setup. The proposed method automatically extracts significant points on the human body, without the need of artificial markers. A sophisticated appearance-based tracking able to cope with occlusions is exploited to extract a probability map for each moving object. A segmentation technique based on mixture of Gaussians is then employed to extract and track significant points on this map, corresponding to significant regions on the human silhouette. The point tracking produces a set of 3D trajectories that are compared with other trajectories by means of global alignment and dynamic programming techniques. Preliminary experiments showed the potentiality of the proposed approach.

2008 Relazione in Atti di Convegno

Action Signature: a Novel Holistic Representation for Action Recognition

Authors: Calderara, Simone; Cucchiara, Rita; Prati, Andrea

Recognizing different actions with a unique approach can be a difficult task. This paper proposes a novel holistic representation of … (Read full abstract)

Recognizing different actions with a unique approach can be a difficult task. This paper proposes a novel holistic representation of actions that we called "action signature". This 1D trajectory is obtained by parsing the 2D image containing the orientations of the gradient calculated on the motion feature map called motion-history image. In this way, the trajectory is a sketch representation of how the object motion varies in time. A robust statistical framework based on mixtures of von Mises distributions and dynamic programming for sequence alignment are used to compare and classify actions/trajectories. The experimental results show a rather high accuracy in distinguishing quite complicated actions, such as drinking, jumping, or abandoning an object.

2008 Relazione in Atti di Convegno