Multi-scale crowd feature detection using vision sensing and statistical mechanics principles
Crowd behaviour analysis using vision has been subject to many different approaches. Multi-purpose crowd descriptors are one of the more recent approaches. These descriptors provide an opportunity to compare and categorize various types of crowds as well as classify their respective behaviours. Neve...
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Veröffentlicht in: | Machine vision and applications 2020-05, Vol.31 (4), Article 26 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Crowd behaviour analysis using vision has been subject to many different approaches. Multi-purpose crowd descriptors are one of the more recent approaches. These descriptors provide an opportunity to compare and categorize various types of crowds as well as classify their respective behaviours. Nevertheless, the automated calculation of descriptors which are expressed as measurements with accurate interpretation is a challenging problem. In this paper, analogies between human crowds and molecular thermodynamics systems are drawn for the measurement of crowd behaviour. Specifically, a novel descriptor is defined and measured for crowd behaviour at multiple scales. This descriptor uses the concept of
Entropy
for evaluating the state of crowd disorder. By results, the descriptor
Entropy
does indeed appear to capture the desired outcome for crowd entropy while utilizing easily detectable image features. Our new approach for machine understanding of crowd behaviour is promising, while it offers new complementary capabilities to the existing crowd descriptors, for example, as will be demonstrated, in the case of spectator crowds. The scope and performance of this descriptor are further discussed in detail in this paper. |
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ISSN: | 0932-8092 1432-1769 |
DOI: | 10.1007/s00138-020-01075-4 |