There are complex posture changes in dance movements, which lead to the low accuracy of dance movement recognition. And none of the current motion recognition uses the dancer’s attributes. The attribute feature of dancer is the important high-level semantic information in the action recognition. Therefore, a dance movement recognition algorithm based on feature expression and attribute mining is designed to learn the complicated and changeable dancer movements. Firstly, the original image information is compressed by the time-domain fusion module, and the information of action and attitude can be expressed completely. Then, a two-way feature extraction network is designed, which extracts the details of the actions along the way and takes th...
In this paper, we scrutinize the effectiveness of classification techniques in recognizing dance typ...
In this paper, the main technologies of foreground detection, feature description and extraction, mo...
In this paper, we present a conceptual framework and toolkit for movement annotation. We explain how...
In the field of computer vision, action recognition is a very difficult topic to study. This paper s...
In order to effectively improve the recognition rate of human action in dance video image, shorten t...
Because of its high research value, action recognition has become a very popular research direction ...
Human-computer interaction technology simplifies the complicated procedures, which aims at solving t...
Background: With the rise of user-generated content (UGC) platforms, we are witnessing an unpreceden...
At present, part of people's body is in the state of sub-health, and more people pay attention to ph...
This work aims to apply advancements in deep learning for image classication to improvethe recogniti...
Dancing is an art form of creative expression that is based on movement. Dancing comprises varying s...
In order to verify the effectiveness and feasibility of the combination of motion capture technology...
International audienceThis study investigates the accuracy of human dance motion capture and classif...
This paper suggests a method of classifying Korean pop (K-pop) dances based on human skeletal motion...
Extracting and recognizing complex human movements from unconstrained online/offline video sequence ...
In this paper, we scrutinize the effectiveness of classification techniques in recognizing dance typ...
In this paper, the main technologies of foreground detection, feature description and extraction, mo...
In this paper, we present a conceptual framework and toolkit for movement annotation. We explain how...
In the field of computer vision, action recognition is a very difficult topic to study. This paper s...
In order to effectively improve the recognition rate of human action in dance video image, shorten t...
Because of its high research value, action recognition has become a very popular research direction ...
Human-computer interaction technology simplifies the complicated procedures, which aims at solving t...
Background: With the rise of user-generated content (UGC) platforms, we are witnessing an unpreceden...
At present, part of people's body is in the state of sub-health, and more people pay attention to ph...
This work aims to apply advancements in deep learning for image classication to improvethe recogniti...
Dancing is an art form of creative expression that is based on movement. Dancing comprises varying s...
In order to verify the effectiveness and feasibility of the combination of motion capture technology...
International audienceThis study investigates the accuracy of human dance motion capture and classif...
This paper suggests a method of classifying Korean pop (K-pop) dances based on human skeletal motion...
Extracting and recognizing complex human movements from unconstrained online/offline video sequence ...
In this paper, we scrutinize the effectiveness of classification techniques in recognizing dance typ...
In this paper, the main technologies of foreground detection, feature description and extraction, mo...
In this paper, we present a conceptual framework and toolkit for movement annotation. We explain how...