Filtered Channel Features for Pedestrian Detection

Shanshan Zhang, Rodrigo Benenson, Bernt Schiele

Abstract

This paper starts from the observation that multiple top performing pedestrian detectors can be modelled by using an intermediate layer filtering low-level features in combination with a boosted decision forest. Based on this observation we propose a unifying framework and experimentally explore different filter families. We report extensive results enabling a systematic analysis. Using filtered channel features we obtain top performance on the challenging Caltech and KITTI datasets, while using only HOG+LUV as low-level features. When adding optical flow features we further improve detection quality and report the best known results on the Caltech dataset, reaching 93% recall at 1 FPPI.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesCaltechReasonable Miss Rate17.1Checkerboards+
Pedestrian DetectionCaltechReasonable Miss Rate17.1Checkerboards+

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