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Single-Fusion Detector: Towards Faster Multi-Scale Object Detection

机译:单融合检测器:迈向更快的多尺度目标检测

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Despite recent improvements, the arbitrary sizes of objects still impede the predictive ability of object detectors. Recent solutions combine feature maps of different receptive fields to detect multi-scale objects. However, these methods have large computational costs resulting to slower inference time, which is not practical for real-time applications. Contrarily, fusion methods depending on large networks with many skip connections demand larger memory requirement, prohibiting usage in devices with limited memory. In this paper, we propose a more computationally efficient fusion method which integrates higher-order information to low-level feature maps using a single operation. Our method can flexibly adapt to any base network, allowing tailored performance for different computational requirements. Our approach achieves 81.7% mAP at 41 FPS on the PASCAL VOC dataset using ResNet-50 as the base network, which is superior in terms of both speed and mAP as compared to several state-of-the-art baselines, even those which use larger base networks.
机译:尽管最近有改进,但是对象的任意大小仍然会妨碍对象检测器的预测能力。最近的解决方案结合了不同感受野的特征图来检测多尺度物体。但是,这些方法的计算量很大,导致推理时间变慢,这对于实时应用而言不切实际。相反,依赖于具有许多跳过连接的大型网络的融合方法需要更大的内存需求,从而禁止在内存有限的设备中使用。在本文中,我们提出了一种计算效率更高的融合方法,该方法使用一次操作即可将高阶信息集成到低级特征图。我们的方法可以灵活地适应任何基础网络,从而为不同的计算需求提供量身定制的性能。我们的方法使用ResNet-50作为基础网络,在PASCAL VOC数据集上以41 FPS达到了81.7%的mAP,与几种最新的基准相比,即使在速度和mAP方面,该方法在速度和mAP方面也更胜一筹更大的基础网络。

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