International audienceWe present a new approach for matching tree instances across multiple street-view panorama images for the ultimate goal of city-scale street-tree mapping with high positioning accuracy. What makes this task challenging is the strong change in viewpoint , different lighting conditions, high similarity of neighboring trees, and variability in scale. We propose to turn (tree) instance matching into a learning task, where image-appearance and geometric relationships between views fruitfully interact. Our approach constructs a siamese convolutional neural network that learns to match two views of the same tree given many candidate tree image cutouts and geographic information of the two panorama images. In addition to image...