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<dublin_core schema="dc">
<dcvalue element="contributor" qualifier="author">Sung,&#x20;Dong&#x20;Jin</dcvalue>
<dcvalue element="contributor" qualifier="author">Jeong,&#x20;Ji&#x20;Hyeok</dcvalue>
<dcvalue element="contributor" qualifier="author">Kim,&#x20;Keun-Tae</dcvalue>
<dcvalue element="contributor" qualifier="author">Lee,&#x20;Ji-Yoon</dcvalue>
<dcvalue element="contributor" qualifier="author">Lee,&#x20;Song&#x20;Joo</dcvalue>
<dcvalue element="contributor" qualifier="author">Kim,&#x20;Hyungmin</dcvalue>
<dcvalue element="date" qualifier="accessioned">2026-03-09T05:30:09Z</dcvalue>
<dcvalue element="date" qualifier="available">2026-03-09T05:30:09Z</dcvalue>
<dcvalue element="date" qualifier="created">2026-03-09</dcvalue>
<dcvalue element="date" qualifier="issued">2026-07</dcvalue>
<dcvalue element="identifier" qualifier="issn">1746-8094</dcvalue>
<dcvalue element="identifier" qualifier="uri">https:&#x2F;&#x2F;pubs.kist.re.kr&#x2F;handle&#x2F;201004&#x2F;154410</dcvalue>
<dcvalue element="description" qualifier="abstract">Motor&#x20;imagery&#x20;(MI)-based&#x20;brain–computer&#x20;interfaces&#x20;(BCIs)&#x20;provide&#x20;a&#x20;promising&#x20;non-invasive&#x20;solution&#x20;for&#x20;motor&#x20;rehabilitation&#x20;and&#x20;assistive&#x20;control.&#x20;However,&#x20;the&#x20;use&#x20;of&#x20;multichannel&#x20;electroencephalography&#x20;(EEG)&#x20;often&#x20;results&#x20;in&#x20;high-dimensional&#x20;and&#x20;noise-prone&#x20;data,&#x20;posing&#x20;both&#x20;practical&#x20;and&#x20;computational&#x20;challenges&#x20;for&#x20;real-world&#x20;implementation.&#x0A;To&#x20;address&#x20;these&#x20;issues,&#x20;we&#x20;propose&#x20;a&#x20;few-shot&#x20;channel&#x20;selection&#x20;framework&#x20;that&#x20;integrates&#x20;wavelet&#x20;scattering&#x20;transforms&#x20;(WSTs)&#x20;for&#x20;robust,&#x20;shift-invariant&#x20;feature&#x20;extraction&#x20;with&#x20;a&#x20;squeeze-and-excitation&#x20;(SE)&#x20;convolutional&#x20;neural&#x20;network&#x20;(CNN)&#x20;for&#x20;end-to-end&#x20;channel&#x20;selection.&#x20;Our&#x20;approach&#x20;identifies&#x20;informative&#x20;EEG&#x20;channels&#x20;using&#x20;only&#x20;a&#x20;small&#x20;number&#x20;of&#x20;labeled&#x20;samples&#x20;from&#x20;a&#x20;target&#x20;individual,&#x20;allowing&#x20;subsequent&#x20;model&#x20;training&#x20;with&#x20;the&#x20;reduced&#x20;channel&#x20;set.&#x0A;We&#x20;evaluated&#x20;the&#x20;proposed&#x20;method&#x20;on&#x20;two&#x20;public&#x20;upper-limb&#x20;MI&#x20;EEG&#x20;datasets&#x20;(SHU&#x20;and&#x20;Stroke;&#x20;75&#x20;participants)&#x20;and&#x20;an&#x20;in-house&#x20;lower-limb&#x20;MI&#x20;dataset&#x20;comprising&#x20;12&#x20;healthy&#x20;and&#x20;5&#x20;spinal&#x20;cord&#x20;injury&#x20;participants.&#x20;Across&#x20;all&#x20;datasets,&#x20;the&#x20;framework&#x20;retained&#x20;or&#x20;improved&#x20;classification&#x20;performance&#x20;using&#x20;as&#x20;few&#x20;as&#x20;three&#x20;channels.&#x20;Topographic&#x20;analyses&#x20;revealed&#x20;consistent&#x20;channel&#x20;selection&#x20;patterns&#x20;in&#x20;motor,&#x20;parietal,&#x20;and&#x20;prefrontal&#x20;cortical&#x20;regions.&#x0A;These&#x20;findings&#x20;demonstrate&#x20;the&#x20;feasibility&#x20;of&#x20;efficient&#x20;and&#x20;scalable&#x20;MI-BCI&#x20;systems&#x20;that&#x20;require&#x20;minimal&#x20;setup,&#x20;supporting&#x20;broader&#x20;applications&#x20;across&#x20;both&#x20;healthy&#x20;and&#x20;impaired&#x20;populations.</dcvalue>
<dcvalue element="language" qualifier="none">English</dcvalue>
<dcvalue element="publisher" qualifier="none">Elsevier&#x20;BV</dcvalue>
<dcvalue element="title" qualifier="none">Few-shot&#x20;channel&#x20;selection&#x20;with&#x20;wavelet&#x20;scattering&#x20;and&#x20;squeeze-and-excitation&#x20;for&#x20;EEG&#x20;motor&#x20;imagery&#x20;classification</dcvalue>
<dcvalue element="type" qualifier="none">Article</dcvalue>
<dcvalue element="identifier" qualifier="doi">10.1016&#x2F;j.bspc.2026.110046</dcvalue>
<dcvalue element="description" qualifier="journalClass">1</dcvalue>
<dcvalue element="identifier" qualifier="bibliographicCitation">Biomedical&#x20;Signal&#x20;Processing&#x20;and&#x20;Control,&#x20;v.120,&#x20;no.Part&#x20;A</dcvalue>
<dcvalue element="citation" qualifier="title">Biomedical&#x20;Signal&#x20;Processing&#x20;and&#x20;Control</dcvalue>
<dcvalue element="citation" qualifier="volume">120</dcvalue>
<dcvalue element="citation" qualifier="number">Part&#x20;A</dcvalue>
<dcvalue element="description" qualifier="isOpenAccess">N</dcvalue>
<dcvalue element="description" qualifier="journalRegisteredClass">scie</dcvalue>
<dcvalue element="description" qualifier="journalRegisteredClass">scopus</dcvalue>
<dcvalue element="identifier" qualifier="wosid">001711372100001</dcvalue>
<dcvalue element="relation" qualifier="journalWebOfScienceCategory">Engineering,&#x20;Biomedical</dcvalue>
<dcvalue element="relation" qualifier="journalResearchArea">Engineering</dcvalue>
<dcvalue element="type" qualifier="docType">Article</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Brain-computer&#x20;interface</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Electroencephalography</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Channel&#x20;selection</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Wavelet&#x20;scattering&#x20;transform</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Convolutional&#x20;neural&#x20;network</dcvalue>
</dublin_core>
