4.5 Article

Recognition of Car Front Facing Style for Machine-Learning Data Annotation: A Quantitative Approach

期刊

SYMMETRY-BASEL
卷 14, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/sym14061181

关键词

car-facing morphology; style perception; style quantification; data annotation; machine-learning; computational intelligence in industrial design; symmetry

资金

  1. National Key R&D Program of China [2018YFB1308500]
  2. two bath of 2021 MOE of PRC Industry-University Collaborative Program [202102055018]
  3. Key Research and Development Project of Hubei Province (Key technologies and application demonstrations of smart cockpit design for L3+ autonomous vehicles)
  4. Wuhan University of Technology [211416004]

向作者/读者索取更多资源

Car front facing style (CFFS) recognition is crucial for enhancing market competitiveness and brand image. This study proposes a deep feature-based machine learning approach for CFFS recognition and establishes a dataset with eight types of styles. The results show that the proposed method improves accuracy in CFFS data annotation and achieves high accuracy rates with five classic classifiers.
Car front facing style (CFFS) recognition is crucial to enhancing a company's market competitiveness and brand image. However, there is a problem impeding its development: with the sudden increase in style design information, the traditional methods, based on feature calculation, are insufficient to quickly handle style analysis with a large volume of data. Therefore, we introduced a deep feature-based machine learning approach to solve the problem. Datasets are the basis of machine learning, but there is a lack of references for car style data annotations, which can lead to unreliable style data annotation. Therefore, a CFFS recognition method was proposed for machine-learning data annotation. Specifically, this study proposes a hierarchical model for analyzing CFFS style from the morphological perspective of layout, surface, graphics, and line. Based on the quantitative percentage of the three elements of style, this paper categorizes the CFFS into eight basic types of style and distinguishes the styles by expert analysis to summarize the characteristics of each layout, shape surface, and graphics. We use imagery diagrams and typical CFFS examples and characteristic laws of each style as annotation references to guide manual annotation data. This investigation established a CFFS dataset with eight types of style. The method was evaluated from a design perspective; we found that the accuracy obtained when using this method for CFFS data annotation exceeded that obtained when not using this method by 32.03%. Meanwhile, we used Vgg19, ResNet, ViT, MAE, and MLP-Mixer, five classic classifiers, to classify the dataset; the average accuracy rates were 76.75%, 78.47%, 78.07%, 75.80%, and 81.06%. This method effectively transforms human design knowledge into machine-understandable structured knowledge. There is a symmetric transformation of knowledge in the computer-aided design process, providing a reference for machine learning to deal with abstract style problems.

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