Target detection using incremental learning on single-trial evoked response

Taipei(2009)

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摘要
The human neural responses associated with cognitive events, referred as event related potentials (ERPs), can provide reliable inference for target image detection. Incremental learning has been widely investigated to deal with large datasets. To solve the problem of data growing over time in cross session studies, we apply an incremental learning support vector machines (SVM) method on single-trial ERP detection for identifying targets in satellite images. We implement the incremental learning SVM by keeping only the support vectors, instead of all the data, from the previous sessions and incorporating them with the data of the current session. Thus the incremental learning dramatically reduces the computational load. The results demonstrate that the incremental learning ERP detection system performs as well as the naive method, which uses only the current training session, and the batch mode, which uses all training data. Furthermore, it is more computationally efficient, which allows it to better cope with a continuous stream of EEG data.
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关键词
single-trial evoked response,eeg data,event-related potential,incremental learning svm,erp detection system,human neural responses,target image detection,brain computer interface,learning (artificial intelligence),brain-computer interfaces,current training session,index terms— brain computer interface,support vector machine,cross session study,tar- get detection,target detection,satellite images,event related potentials,object detection,incremental learning,previous session,cognitive events,current session,support vector machines,incremental learning support vector,training data,indexing terms,kernel,machine learning,reliability engineering,system performance,electroencephalography,data mining,support vector,learning artificial intelligence,brain computer interfaces,event related potential,satellites
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