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異常検知とGAN: Efficient GAN

  • 1. 0 626 9 - . 1 3 9 817 2 6 9 EB N A B G N D
  • 2. 6 LAM 2 B MI E • .BBE EA 0 NA I H -A A E – 1 PNN I :A E ,DP 8DA C / MP A P 0 PM AG EF I NAND ,D M NAGD M – D LN MSE MC >N – 2, R MGND L – 0 ir vx zV 0 eu • 0 ir y c] vx • 0 is hwdS e. AMfopds h bdg aV 0 d ajklemZ d [h e en it
  • 4. • a kld s W • & e Rs R em E W • E E R & R & Rt u W Ric n W oA I • GD p – &R N x WDN W W • r NE – W – & & R
  • 5. .88 5 7 B0 2 • 0 2 lho F 0 2 0 2 F u v r Fn od L – 0 2 u F v fipc . 5 67 tu F u N sx – 0 2 Gagbe F 0 2 • 6D7 A /7 B 7 17 9 • :BB A E D 9 A
  • 6. , ( • (E D (D : a GEd D , ) D N E B – NE Bfc • E , , NE • , , ) D A ei D NE
  • 7. ) • a () E cdA G – cd e !" – )N A E
  • 8. C 8 8 • ,12 ))( 0 Sl U • ,12 – ,12V K U ox T Ey n T – n s 9 n sT 8A T – T St – U E D 1 8 prM VE A d I e mG g l N P i a c
  • 9. B C E • 0--, )) – 0--, )) % E D E gt yVPS – rya EC rya V ya E DEV – , 571 -5 1 - 11 A 2Vx – M A G 59AC s D9C EAC l N n K i p U O c de – A 2 o ( ) gm
  • 10. C 9 GE>C CAA a O E a C a M 9C: Di gU it bed 9C: : 9C: a i O D 9C E DDCD :>E9D>A> CD u i cvh i gM 9C: Daz i gU y TgKa i g S - . 2 V 1 M mNk mNk O • or k Owl Nns V P CA 9 >C I> D > : DE D> ICD E - & : DE D> >EG -DD G D> 9 >C