1.DNN(Deep Neural Network) 방식의 Global Descriptor
DNN 방식의 Global descritptor로 Tutorial 2번째를 채우도록하겠다.
DNN 방식 이전 방법론의 형태를 가져가서 Network를 구성한 NetVLAD부터 Network를 다른 DNN 처럼 구성한 R-MaC, GeM 마지막으로 현재 SOTA 방법론인 APGeM 까지 다뤄보도록하겠다.
2. NetVLAD
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3.R-MaC &&GeM
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4.APGeM
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미완성.
혹시 tutorial 3도 있나요? + 양심도 있나요?