Ieee Transactions on Intelligent Transportation Systems the Benefits of Dense Stereo for Pedestrian Detection
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Dariu Gavrila | Marcus Rohrbach | David Fernández Llorca | Christoph Gustav Keller | Christoph Schnörr | Markus Enzweiler | C. G. Keller | D. F. Llorca | Marcus Rohrbach | D. Gavrila | C. Schnörr | M. Enzweiler
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