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Toward high-performance online HCCR: a CNN approach with DropDistortion,
  path signature and spatial stochastic max-pooling

Toward high-performance online HCCR: a CNN approach with DropDistortion, path signature and spatial stochastic max-pooling

24 February 2017
Songxuan Lai
Lianwen Jin
Weixin Yang
ArXivPDFHTML

Papers citing "Toward high-performance online HCCR: a CNN approach with DropDistortion, path signature and spatial stochastic max-pooling"

1 / 1 papers shown
Title
Skeleton-based Gesture Recognition Using Several Fully Connected Layers
  with Path Signature Features and Temporal Transformer Module
Skeleton-based Gesture Recognition Using Several Fully Connected Layers with Path Signature Features and Temporal Transformer Module
Chenyang Li
Xin Zhang
Lufan Liao
Lianwen Jin
Weixin Yang
SLR
16
41
0
17 Nov 2018
1