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2016
Conference Paper
Titel
Moving object reconstruction in monocular video data using boundary generation
Abstract
We present a method to reconstruct the threedimensional shape of a moving instance of a known object category in video data. We exploit state-of-the-art semantic segmentation techniques to extract the objects two-dimensional shape in each frame. Therefore, our method is robust to occlusion, handles stationary objects and extends naturally to multiple video sequences. We apply Structure from Motion (SfM) to previously generated object images in order to compute a threedimensional representation of the object. Our approach allows us to remove outliers in SfM reconstructions and to compute clean object meshes by leveraging previously computed semantic segmentations and virtual camera positions. We evaluate the accuracy of our method using a multi-view dataset of a moving vehicle. A laser scan serves as ground truth. We applied our algorithm on publicly available video data and on 25 sequences from our dataset. The algorithm achieves an average point distance of 3.3 cm evaluated on seven trajectories contained in the dataset.