Learning of Scene-Specific Object Detectors by Classifier Co-Grids

Sabine Sternig, P. Roth, H. Bischof
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引用次数: 7

Abstract

Recently, classifier grids have shown to be a considerablealternative to sliding window approaches for objectdetection from static cameras. The main drawback of suchmethods is that they are biased by the initial model. In fact,the classifiers can be adapted to changing environmentalconditions but due to conservative updates no new objectspecificinformation is acquired. Thus, the goal of this workis to increase the recall of scene-specific classifiers whilepreserving their accuracy and speed. In particular, we introducea co-training strategy for classifier grids using arobust on-line learner. Thus, the robustness is preservedwhile the recall can be increased. The co-training strategyrobustly provides negative as well as positive updates. Inaddition, the number of negative updates can be drasticallyreduced, which additionally speeds up the system. In theexperimental results these benefits are demonstrated on differentpublicly available surveillance benchmark data sets.
基于分类器协同网格的场景特定目标检测器学习
最近,分类器网格已被证明是静态摄像机中物体检测的滑动窗口方法的一个相当大的替代方案。这种方法的主要缺点是它们受到初始模型的影响。事实上,分类器可以适应不断变化的环境条件,但由于保守更新,没有获得新的对象特定信息。因此,本工作的目标是在保持其准确性和速度的同时提高场景特定分类器的召回率。特别地,我们引入了一种基于在线学习器的分类器网格协同训练策略。因此,在保持鲁棒性的同时可以提高召回率。联合训练策略鲁棒地提供负向和正向的更新。此外,负面更新的数量可以大大减少,这也加快了系统的速度。在实验结果中,这些好处在不同的公开监测基准数据集上得到了证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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