KamitaniLab DeepImageReconstruction 데이터 및 데모 코드
Source
Google Keep/GitHub - KamitaniLab_DeepImageReconstruction_ Data.md
Summary
이 문서는 Kamitani 연구실의 ‘DeepImageReconstruction’ GitHub 저장소 링크를 제공한다. 해당 저장소는 Shen, Horikawa, Majima, Kamitani 의 논문 ‘Deep image reconstruction from human brain activity’에 사용된 데이터와 데모 코드를 포함한다.
Key Points
- KamitaniLab 의 DeepImageReconstruction 프로젝트 공식 GitHub 저장소
- 인간 뇌 활동으로부터 심층 이미지 복원(Deep image reconstruction) 관련 연구 자료
- 논문 데이터셋 및 데모 코드 제공
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