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Explanation of AI, as well as fairness of algorithms’ decisions and the transparency of the decision model, are becoming more and more important. And it is crucial to design effective and humanfriendly techniques when opening the black-box model. Counterfactual conforms to the human way of thinking and provides a human-friendly explanation, and its corresponding explanation algorithm refers to a strategic alternation of a given data point so that its model output is “counter-facted”, i.e. the prediction is reverted. In this paper,we adapt counterfactual explanation over finegrained image classification problem. We demonstrated an adaptive method that could give a counterfactual explanation by showing the composed counterfactual featuremap using top-down layer searching algorithm (TDLS). We have proved that our TDLS algorithm could provide more flexible counterfactual visual explanation in an efficient way using VGG-16 model on Caltech-UCSD Birds 200 dataset. At the end, we discussed several applicable scenarios of counterfactual visual explanations. CCS CONCEPTS • Computing methodologies→Machine learning; •Humancentered computing→ Human computer interaction (HCI).