Recognition of Design Fixation via Body Language Using Computer Vision

The main objective of this study is to recognize design fixation accurately and effectively. First, we conducted an experiment to record the videos of design process and design sketches from 12 designers for 15 minutes. Then, we executed a video analysis of body language in designers, correlating bo...

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Main Authors: Zhongliang Yang, Yumiao Chen, Song Zhang
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/6649300
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spelling doaj-e308c55b8f834f7b8b85072a38163eb72021-09-06T00:00:50ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/6649300Recognition of Design Fixation via Body Language Using Computer VisionZhongliang Yang0Yumiao Chen1Song Zhang2College of Mechanical EngineeringSchool of Art, Design and MediaDepartment of MaterialsThe main objective of this study is to recognize design fixation accurately and effectively. First, we conducted an experiment to record the videos of design process and design sketches from 12 designers for 15 minutes. Then, we executed a video analysis of body language in designers, correlating body language to the presence of design fixation, as judged by a panel of six experts. We found that three body language types were significantly correlated to fixation. A two-step hybrid recognition model of design fixation based on body language was proposed. The first-step recognition model of body language using transfer learning based on a pretrained VGG-16 convolutional neural network was constructed. The average recognition rate achieved by the VGG-16 model was 92.03%. Then, the frames of recognized body language were used as input vectors to the second-step fixation classification model based on support vector machine (SVM). The average recognition rate for the fixation state achieved by the SVM model was 79.11%. The impact of the work could be that the fixation can be detected not only by the sketch outcomes but also by monitoring the movements, expressions, and gestures of designers, as it is happening by monitoring the movements, expressions, and gestures of designers.http://dx.doi.org/10.1155/2021/6649300
collection DOAJ
language English
format Article
sources DOAJ
author Zhongliang Yang
Yumiao Chen
Song Zhang
spellingShingle Zhongliang Yang
Yumiao Chen
Song Zhang
Recognition of Design Fixation via Body Language Using Computer Vision
Mathematical Problems in Engineering
author_facet Zhongliang Yang
Yumiao Chen
Song Zhang
author_sort Zhongliang Yang
title Recognition of Design Fixation via Body Language Using Computer Vision
title_short Recognition of Design Fixation via Body Language Using Computer Vision
title_full Recognition of Design Fixation via Body Language Using Computer Vision
title_fullStr Recognition of Design Fixation via Body Language Using Computer Vision
title_full_unstemmed Recognition of Design Fixation via Body Language Using Computer Vision
title_sort recognition of design fixation via body language using computer vision
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description The main objective of this study is to recognize design fixation accurately and effectively. First, we conducted an experiment to record the videos of design process and design sketches from 12 designers for 15 minutes. Then, we executed a video analysis of body language in designers, correlating body language to the presence of design fixation, as judged by a panel of six experts. We found that three body language types were significantly correlated to fixation. A two-step hybrid recognition model of design fixation based on body language was proposed. The first-step recognition model of body language using transfer learning based on a pretrained VGG-16 convolutional neural network was constructed. The average recognition rate achieved by the VGG-16 model was 92.03%. Then, the frames of recognized body language were used as input vectors to the second-step fixation classification model based on support vector machine (SVM). The average recognition rate for the fixation state achieved by the SVM model was 79.11%. The impact of the work could be that the fixation can be detected not only by the sketch outcomes but also by monitoring the movements, expressions, and gestures of designers, as it is happening by monitoring the movements, expressions, and gestures of designers.
url http://dx.doi.org/10.1155/2021/6649300
work_keys_str_mv AT zhongliangyang recognitionofdesignfixationviabodylanguageusingcomputervision
AT yumiaochen recognitionofdesignfixationviabodylanguageusingcomputervision
AT songzhang recognitionofdesignfixationviabodylanguageusingcomputervision
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