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- Title
Improvement in Error Recognition of Real-Time Football Images by an Object-Augmented AI Model for Similar Objects.
- Authors
Han, Junsu; Kang, Kiho; Kim, Jongwon
- Abstract
In this paper, we analyze the recognition error of the general AI recognition model and propose the structure-modified and object-augmented AI recognition model. This model has object detection features that distinguish specific target objects in target areas where players with similar shapes and characteristics overlapped in real-time football images. We implemented the AI recognition model by reinforcing the training dataset and augmenting the object class. In addition, it is shown that the recognition rate increased by modifying the model structure based on the recognition errors analysis of general AI recognition models. Recognition errors were decreased by applying the modules of HSV processing and differentiated classes (overlapped player groups) learning to the general AI recognition model. We experimented in order to compare the recognition error reducing performance with the general AI model and the proposed AI model by the same real-time football images. Through this study, we have confirmed that the proposed model can reduce errors. It showed that the proposed AI model structure to recognize similar objects in real-time and in various environments could be used to analyze football games.
- Subjects
ARTIFICIAL intelligence; IMAGE recognition (Computer vision); SOCCER
- Publication
Electronics (2079-9292), 2022, Vol 11, Issue 23, p3876
- ISSN
2079-9292
- Publication type
Article
- DOI
10.3390/electronics11233876