classifier calibration
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Sensors ◽  
2022 ◽  
Vol 22 (2) ◽  
pp. 633
Author(s):  
Lukáš Picek ◽  
Milan Šulc ◽  
Jiří Matas ◽  
Jacob Heilmann-Clausen ◽  
Thomas S. Jeppesen ◽  
...  

The article presents an AI-based fungi species recognition system for a citizen-science community. The system’s real-time identification too — FungiVision — with a mobile application front-end, led to increased public interest in fungi, quadrupling the number of citizens collecting data. FungiVision, deployed with a human-in-the-loop, reaches nearly 93% accuracy. Using the collected data, we developed a novel fine-grained classification dataset — Danish Fungi 2020 (DF20) — with several unique characteristics: species-level labels, a small number of errors, and rich observation metadata. The dataset enables the testing of the ability to improve classification using metadata, e.g., time, location, habitat and substrate, facilitates classifier calibration testing and finally allows the study of the impact of the device settings on the classification performance. The continual flow of labelled data supports improvements of the online recognition system. Finally, we present a novel method for the fungi recognition service, based on a Vision Transformer architecture. Trained on DF20 and exploiting available metadata, it achieves a recognition error that is 46.75% lower than the current system. By providing a stream of labeled data in one direction, and an accuracy increase in the other, the collaboration creates a virtuous cycle helping both communities.


2021 ◽  
Vol 14 ◽  
Author(s):  
Lei Cao ◽  
Shugeng Chen ◽  
Jie Jia ◽  
Chunjiang Fan ◽  
Haoran Wang ◽  
...  

The Brain Computer Interface (BCI) system is a typical neurophysiological application which helps paralyzed patients with human-machine communication. Stroke patients with motor disabilities are able to perform BCI tasks for clinical rehabilitation. This paper proposes an effective scheme of transfer calibration for BCI rehabilitation. The inter- and intra-subject transfer learning approaches can improve the low-precision classification performance for experimental feedback. The results imply that the systematical scheme is positive in increasing the confidence of voluntary training for stroke patients. In addition, it also reduces the time consumption of classifier calibration.


2020 ◽  
Vol 14 (3) ◽  
pp. 1-19 ◽  
Author(s):  
Alasalmi Tuomo ◽  
Jaakko Suutala ◽  
Juha Röning ◽  
Heli Koskimäki

2016 ◽  
Vol 26 (03) ◽  
pp. 1650010 ◽  
Author(s):  
Minpeng Xu ◽  
Jing Liu ◽  
Long Chen ◽  
Hongzhi Qi ◽  
Feng He ◽  
...  

Although the inter-subject information has been demonstrated to be effective for a rapid calibration of the P300-based brain–computer interface (BCI), it has never been comprehensively tested to find if the incorporation of heterogeneous data could enhance the accuracy. This study aims to improve the subject-specific P300 classifier by adding other subject’s data. A classifier calibration strategy, weighted ensemble learning generic information (WELGI), was developed, in which elementary classifiers were constructed by using both the intra- and inter-subject information and then integrated into a strong classifier with a weight assessment. 55 subjects were recruited to spell 20 characters offline using the conventional P300-based BCI, i.e. the P300-speller. Four different metrics, the P300 accuracy and precision, the round accuracy, and the character accuracy, were performed for a comprehensive investigation. The results revealed that the classifier constructed on the training dataset in combination with adding other subject’s data was significantly superior to that without the inter-subject information. Therefore, the WELGI is an effective classifier calibration strategy which uses the inter-subject information to improve the accuracy of subject-specific P300 classifiers, and could also be applied to other BCI paradigms.


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