To Boost or Not to Boost? On the Limits of Boosted Trees for Object Detection

2016 23rd International Conference on Pattern Recognition (ICPR)(2017)

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摘要
We aim to study the modeling limitations of the commonly employed boosted decision trees classifier. Inspired by the success of large, data-hungry visual recognition models (e.g. deep convolutional neural networks), this paper focuses on the relationship between modeling capacity of the weak learners, dataset size, and dataset properties. A set of novel experiments on the Caltech Pedestrian Detection benchmark results in the best known performance among non-CNN techniques while operating at fast run-time speed. Furthermore, the performance is on par with deep architectures (9.71% log-average miss rate), while using only HOG+LUV channels as features. The conclusions from this study are shown to generalize over different object detection domains as demonstrated on the FDDB face detection benchmark (93.37% accuracy). Despite the impressive performance, this study reveals the limited modeling capacity of the common boosted trees model, motivating a need for architectural changes in order to compete with multi-level and very deep architectures.
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关键词
boosted trees,object detection,modeling limitations,employed boosted decision trees classifier,data-hungry visual recognition models,deep convolutional neural networks,dataset size,weak learners,dataset properties,Caltech Pedestrian Detection benchmark,FDDB face detection benchmark
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