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      Taking a Deeper Look at Pedestrians

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          Abstract

          In this paper we study the use of convolutional neural networks (convnets) for the task of pedestrian detection. Despite their recent diverse successes, convnets historically underperform compared to other pedestrian detectors. We deliberately omit explicitly modelling the problem into the network (e.g. parts or occlusion modelling) and show that we can reach competitive performance without bells and whistles. In a wide range of experiments we analyse small and big convnets, their architectural choices, parameters, and the influence of different training data, including pre-training on surrogate tasks. We present the best convnet detectors on the Caltech and KITTI dataset. On Caltech our convnets reach top performance both for the Caltech1x and Caltech10x training setup. Using additional data at training time our strongest convnet model is competitive even to detectors that use additional data (optical flow) at test time.

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          Author and article information

          Journal
          23 January 2015
          Article
          1501.05790
          d0c58a55-88e6-4e12-88b6-175cf0ab2bbd

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          cs.CV

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