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Scene context is more than a Bayesian prior: Competitive vehicle detection with restricted detectors

机译:场景上下文比贝叶斯先验还重要:具有受限检测器的竞争性车辆检测

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We present an approach for making use of scene or situation context in object detection, aiming for state-of-the-art performance while dramatically reducing computational cost. While existing approaches are inspired by Bayes' rule, training context-independent detectors and combining them with context priors in hindsight, we propose to integrate these context priors into detector design itself, through algorithmic choices and/or pre-selection of training examples. Although such restricted detectors will, as a consequence, be valid only in regions compatible with context priors, the corresponding simplification of the object-vs-background decision problem will lead to reduced computation time and/or increased detection performance. We verify this experimentally by analyzing vehicle detection performance in a realistically simulated inner-city environment where context priors are defined by a road surface mask obtained from the simulation tool. Comparing a restricted detector, based on horizontal edges detection refined by neural network confirmation, to a generic HOG+SVM-based approach which takes into account the road context prior, we show that the restricted detector shows superior vehicle detection performance at a vastly reduced computational cost. We show qualitative results that permit the conclusion that the restricted detector will perform well on real-world scenes if appropriate road context priors are available.
机译:我们提出了一种在对象检测中利用场景或情况上下文的方法,旨在实现最先进的性能,同时显着降低计算成本。尽管现有方法受贝叶斯规则启发,训练上下文无关的检测器并将它们与事后先验结合起来进行事后观察,但我们建议通过算法选择和/或预选训练示例将这些上下文先验整合到检测器设计本身中。因此,尽管这样的受限检测器仅在与上下文先验兼容的区域中有效,但是对象与背景决策问题的相应简化将导致计算时间减少和/或检测性能提高。我们通过在真实模拟的城市环境中分析车辆的检测性能,通过实验来验证这一点,在该环境中,先验条件是通过从模拟工具获得的路面遮罩定义的。将基于神经网络确认改进的水平边缘检测的受限检测器与考虑了道路先验的基于HOG + SVM的通用方法进行比较,我们表明受限检测器在大大减少了计算量的情况下显示了出众的车辆检测性能成本。我们显示了定性结果,可以得出这样的结论:如果有合适的道路环境先验条件,则受限检测器将在真实场景中表现良好。

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