Javascript must be enabled to continue!
Novel Video Benchmark Dataset Generation and Real-Time Recognition of Symbolic Hand Gestures in Indian Dance Applying Deep Learning Techniques
View through CrossRef
A computational approach towards promoting, preservation and dissemination of knowledge in the domain of cultural heritage, is one of the research areas that has a widescope. There has been a seismic shift in the way many sectors in society have adapted themselves to the pandemic situation, be it healthcare, food, education diplomacy, and performing arts. Virtual learning and performing have become the need of the hour in the field of performing arts as well. The objective of this work is threefold; first, this creates benchmark datasets to be shared to make a beneficial impact and for a meaningful engagement by capturing, recognising, and classification the multimedia content for hastamudras (hand poses) in Bharathanatyam, an Indian classical dance form which plays a significant role in the conservation of intangible cultural heritage, second as tutoring system to aspiring learners and third, to build video recommendation systems to promote art as a tool for building an international relationship and further elevate the significance of soft-power through performing arts. This paper proposes applying deep-learning techniques of CNNs as a critical technology to recognise the correct mudra. Experimental results on our challenging mudra dataset through the MobileNet architecture show 85%-95% accuracy in real-time, which outperforms the Sebastien-Marcel dataset. The time taken to process an image is 0.172 seconds, and the result is significant considering that the images are dynamic. This work proves the accuracy of the proposed method significantly outperforms another CNN-based Inception v3 model.
Association for Computing Machinery (ACM)
Title: Novel Video Benchmark Dataset Generation and Real-Time Recognition of Symbolic Hand Gestures in Indian Dance Applying Deep Learning Techniques
Description:
A computational approach towards promoting, preservation and dissemination of knowledge in the domain of cultural heritage, is one of the research areas that has a widescope.
There has been a seismic shift in the way many sectors in society have adapted themselves to the pandemic situation, be it healthcare, food, education diplomacy, and performing arts.
Virtual learning and performing have become the need of the hour in the field of performing arts as well.
The objective of this work is threefold; first, this creates benchmark datasets to be shared to make a beneficial impact and for a meaningful engagement by capturing, recognising, and classification the multimedia content for hastamudras (hand poses) in Bharathanatyam, an Indian classical dance form which plays a significant role in the conservation of intangible cultural heritage, second as tutoring system to aspiring learners and third, to build video recommendation systems to promote art as a tool for building an international relationship and further elevate the significance of soft-power through performing arts.
This paper proposes applying deep-learning techniques of CNNs as a critical technology to recognise the correct mudra.
Experimental results on our challenging mudra dataset through the MobileNet architecture show 85%-95% accuracy in real-time, which outperforms the Sebastien-Marcel dataset.
The time taken to process an image is 0.
172 seconds, and the result is significant considering that the images are dynamic.
This work proves the accuracy of the proposed method significantly outperforms another CNN-based Inception v3 model.
Related Results
Introducing the NEMO-Lowlands iconic gesture dataset, collected through a gameful human–robot interaction
Introducing the NEMO-Lowlands iconic gesture dataset, collected through a gameful human–robot interaction
AbstractThis paper describes a novel dataset of iconic gestures, together with a publicly available robot-based elicitation method to record these gestures, which consists of playi...
Tempo in Baroque Music and Dance
Tempo in Baroque Music and Dance
Growing interest in studies on the relationship between music and movement has given rise to many paradigms and theories, including embodied approaches that provide interesting met...
A Comparative Study of Some Selected Classifiers on an Imbalanced Dataset for Sentiment Analysis
A Comparative Study of Some Selected Classifiers on an Imbalanced Dataset for Sentiment Analysis
Extracting subjective data from online user generated text documents is made quite easy with the use of sentiment analysis. For a classification task different individual algorithm...
Introduction to the Tafel v-bis Dataset: Death Duty Summary Information for The Netherlands, 1921
Introduction to the Tafel v-bis Dataset: Death Duty Summary Information for The Netherlands, 1921
Abstract
This article introduces a newly constructed dataset (i.e. the Tafel v-bis Dataset) containing summary information for all Dutch citizens who died in 1921 and were subject ...
Redesigning Assessment for Holistic Learning
Redesigning Assessment for Holistic Learning
This paper discusses the importance of holistic assessment in the teaching and learning process at all levels of education, both in schools and in higher education institutions. Re...
Intercultural Competence Development Among University Students From a Self-Regulated Learning Perspective
Intercultural Competence Development Among University Students From a Self-Regulated Learning Perspective
Abstract. Intercultural competence is defined as a lifelong learning task that can be developed in any intergroup situation. A self-regulated learning model is applied to better un...
Graphic Design for Children with Learning Disabilities Based on the Isaan Mural Painting
Graphic Design for Children with Learning Disabilities Based on the Isaan Mural Painting
The study of 'Graphic design for children with learning disabilities' is a study that delves into learning-disabled children in the Isaan region. The author used the survey to form...
Mo.Se.: Mosaic image segmentation based on deep cascading learning
Mo.Se.: Mosaic image segmentation based on deep cascading learning
<div class="page" title="Page 1"><div class="layoutArea"><div class="column"><p class="VARAbstract">Mosaic is an ancient type of art used to create decorati...