학술논문

Adaptive Convolutionally Enchanced Bi-Directional Lstm Networks For Choreographic Modeling
Document Type
Conference
Source
2020 IEEE International Conference on Image Processing (ICIP) Image Processing (ICIP), 2020 IEEE International Conference on. :1826-1830 Oct, 2020
Subject
Computing and Processing
Signal Processing and Analysis
Conferences
Convolution
Image processing
Logic gates
Adaptation models
Kernel
Adaptive systems
Convolutional LSTM
CNN
LSTM
Posture identification
Folkloric dances
Intangible Cultural Heritage
Language
ISSN
2381-8549
Abstract
In this paper, we present a deep learning scheme for classification of choreographic primitives from RGB images. The proposed framework combines the representational power of feature maps, extracted by Convolutional Neural Networks, with the long-term dependency modeling capabilities of Long Short-Term Memory recurrent neural networks. In addition, it uses AutoRegressive and Moving Average (ARMA) filter into the convolutionally enriched LSTM filter to face dance dynamic characteristics. Finally, an adaptive weight updating strategy is introduced for improving classification modeling performance The framework is used for the recognition of dance primitives (basic dance postures) and is experimentally validated with real-world sequences of traditional Greek folk dances.