首页> 外文会议>International FLINS Conference >COMBINING ADABOOST WITH A HILL-CLIMBING EVOLUTIONARY FEATURE SEARCH FOR EFFICIENT TRAINING OF PERFORMANT VISUAL OBJECT DETECTORS
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COMBINING ADABOOST WITH A HILL-CLIMBING EVOLUTIONARY FEATURE SEARCH FOR EFFICIENT TRAINING OF PERFORMANT VISUAL OBJECT DETECTORS

机译:将Adaboost与山上攀登的进化功能进行结合,寻找表演者视觉对象探测器的有效培训

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This paper presents an efficient method for automatic training of performant visual object detectors, and its successful application to training of a back-view car detector. Our method for training detectors is adaBoost applied to a very general family of visual features (called "control-point" features), with a specific feature-selection weak-learner: evo-HC, which is a hybrid of Hill-Climbing and evolutionary-search. Very good results are obtained for the car-detection application: 95% positive car detection rate with less than one false positive per image frame, computed on an independant validation video. It is also shown that our original hybrid evo-HC weak-learner allows to obtain detection performances that are unreachable in reasonable training time with a crude random search. Finally our method seems to be potentially efficient for training detectors of very different kinds of objects, as it was already previously shown to provide state-of-art performance for pedestrian-detection tasks.
机译:本文提出了一种有效的方法,用于自动培训性能的视觉对象探测器,以及其成功应用于培训后视车探测器。我们的训练方法是Adaboost应用于一般的视觉功能(称为“控制点”特征),具有特定的特征选择弱学习者:EVO-HC,这是爬山和进化的混合-搜索。为汽车检测应用获得了非常好的结果:在独立验证视频上计算了95%的阳性汽车检测率,每张图像帧小于一个误报。还表明我们的原始混合eVO-HC弱学员允许获得在合理的训练时间内无法与原油随机搜索无法访问的检测性能。最后,我们的方法似乎是潜在的培训探测器的培训探测器,因为它已经示出了为行人检测任务提供了最先进的性能。

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