Visual Explanation of Black-box Models Using Layer-wise Class Activation Maps from Approximating Neural Networks |
Kang, JuneGyu
(Jeonbuk National University)
Jeon, MinGyeong (DEEPNOID) Lee, HyeonSeok (Jeonbuk National University) Kim, Sungchan (Jeonbuk National University) |
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