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Occluded Pedestrian Detection Through Guided Attention in CNNs

机译:通过在CNNS中引导的注意力闭塞行人检测

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Pedestrian detection has progressed significantly in the last years. However, occluded people are notoriously hard to detect, as their appearance varies substantially depending on a wide range of occlusion patterns. In this paper, we aim to propose a simple and compact method based on the FasterRCNN architecture for occluded pedestrian detection. We start with interpreting CNN channel features of a pedestrian detector, and we find that different channels activate responses for different body parts respectively. These findings motivate us to employ an attention mechanism across channels to represent various occlusion patterns in one single model, as each occlusion pattern can be formulated as some specific combination of body parts. Therefore, an attention network with self or external guidances is proposed as an add-on to the baseline FasterRCNN detector. When evaluating on the heavy occlusion subset, we achieve a significant improvement of 8pp to the baseline FasterRCNN detector on CityPersons and on Caltech we outperform the state-of-the-art method by 4pp.
机译:在过去几年中,行人检测已经显着进展。然而,由于它们的外观在很大程度上取决于各种遮挡模式,因此遮挡的人难以检测。在本文中,我们的目标是基于Fastrcnn架构提出了一种简单而紧凑的方法,用于遮挡行人检测。我们首先解释行人检测器的CNN通道特征,并发现不同的通道分别激活对不同体零的响应。这些发现使我们能够在一个单一模型中采用通道的注意机制来代表各种遮挡模式,因为每个遮挡模式都可以配制成身体部位的某些特定组合。因此,提出了具有自我或外部指导的注意网络作为基线FasterRCNN检测器的附加品。在评估沉重遮挡子集时,我们在Citypersonson和Caltech上实现了8pp到基线Fasterrcnn探测器的显着改善,我们通过4PP优于最先进的方法。

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