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APPENDIX: A Visual Active Search Frame-
work for Geospatial Exploration
In this appendix, we provide details that could not be in-
cluded in the main paper owing to space constraints, includ-
ing: (A) Performance of V AS under uniform query cost;
(B) V AS Pseudocode; (C) Policy architecture and train-
ing hyperparameter; (D) Search Performance Comparison
with Different Feature Extractor Module; (E) More Visual