2019
DOI: 10.1109/access.2019.2950339
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Spatiotemporal Feature Descriptor for Micro-Expression Recognition Using Local Cube Binary Pattern

Abstract: Micro-expression recognition has been an active research area in recent years, it plays an important role in psychology and public security. Due to the aspects of short duration and subtle movement, it is challenging to extract spatiotemporal features of micro-expressions. The existing methods only extract features in the three-dimensional orthogonal plane and fail to make full use of that information. To solve this problem, we propose a new Local Cubes Binary Patterns (LCBP) method for micro-expression recogn… Show more

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Cited by 14 publications
(20 citation statements)
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“…Moreover, all of this spatiotemporal information, which manifests as changes in pixel brightness, is triggered by facial action. For the direction of facial action, our previous research of ME recognition demonstrates that facial actions are not limited to the temporal orthogonal planes [21]. Herein, we further use the ideas employed in our previous research to statistically distribute the temporal directions of the local facial action for different expression categories.…”
Section: Enhanced Local Cube Binary Pattern (Enhanced Lcbp)mentioning
confidence: 98%
See 4 more Smart Citations
“…Moreover, all of this spatiotemporal information, which manifests as changes in pixel brightness, is triggered by facial action. For the direction of facial action, our previous research of ME recognition demonstrates that facial actions are not limited to the temporal orthogonal planes [21]. Herein, we further use the ideas employed in our previous research to statistically distribute the temporal directions of the local facial action for different expression categories.…”
Section: Enhanced Local Cube Binary Pattern (Enhanced Lcbp)mentioning
confidence: 98%
“…Guo et al [19] proposed to extend the Centralized Binary Pattern (CBP) features in three orthogonal planes to CBP-TOP descriptors, thereby obtaining lower-dimensional and more enriched representations. Meanwhile, due to the problem of losing information by encoding only in the three orthogonal planes, we extended the LBP encoding to the cube space and proposed Local Cube Binary Patterns (LCBP) for ME recognition [21]. LCBP concatenated the feature histograms of direction, amplitude, and central difference to obtain spatiotemporal features, which reduces the feature dimension while preserving the spatiotemporal information.…”
Section: Related Workmentioning
confidence: 99%
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