期刊
SENSORS
卷 21, 期 5, 页码 -出版社
MDPI
DOI: 10.3390/s21051919
关键词
robot object recognition; complex scenes; scene text detection; text recognition
资金
- Jilin Provincial Science and Technology Department [20180201003GX]
This paper presents an object recognition method based on scene text reading, which improves text detection accuracy and recognition accuracy through deep learning models and dataset training, effectively addressing the issue of robot object recognition in complex scenes.
With the aim to solve issues of robot object recognition in complex scenes, this paper proposes an object recognition method based on scene text reading. The proposed method simulates human-like behavior and accurately identifies objects with texts through careful reading. First, deep learning models with high accuracy are adopted to detect and recognize text in multi-view. Second, datasets including 102,000 Chinese and English scene text images and their inverse are generated. The F-measure of text detection is improved by 0.4% and the recognition accuracy is improved by 1.26% because the model is trained by these two datasets. Finally, a robot object recognition method is proposed based on the scene text reading. The robot detects and recognizes texts in the image and then stores the recognition results in a text file. When the user gives the robot a fetching instruction, the robot searches for corresponding keywords from the text files and achieves the confidence of multiple objects in the scene image. Then, the object with the maximum confidence is selected as the target. The results show that the robot can accurately distinguish objects with arbitrary shape and category, and it can effectively solve the problem of object recognition in home environments.
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