基于并行网络的多尺度中心点目标检测

Hao Chen, Hong Zheng, Xiaolong Li
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引用次数: 1

摘要

基于锚的检测器在物体检测中得到了广泛的应用。然而,为了提高对象检测的准确性,在输入图像上密集地放置多个锚框。其中大部分无效。尽管无锚方法可以减少无用锚盒的数量,但无效锚盒仍然占据很高的比例。在此基础上,本文提出了一种基于并行网络的多尺度中心点目标检测方法,以进一步减少无用锚盒的数量。本研究采用沙漏-104和暗网-53的并行网络架构,其中第一个输出热图,在暗网-55的输出属性特征图上生成对象特征定位的中心点。将特征金字塔和CIOU损失函数相结合,在MSCOCO数据集上对该算法进行了训练和测试,提高了目标定位的检测率和小目标检测的准确率。尽管在整体物体检测精度和速度上类似于最先进的两级检测器。
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Detection of Multiscale Center Point Objects Based on Parallel Network
Anchor-based detectors are widely used in object detection. To improve the accuracy of object detection, multiple anchor boxes are intensively placed on the input image, yet. Most of which are invalid. Although the anchor-free method can reduce the number of useless anchor boxes, the invalid ones still occupy a high proportion. On this basis, this paper proposes a multi-scale center point object detection method based on parallel network to further reduce the number of useless anchor boxes. This study adopts the parallel network architecture of hourglass-104 and darknet-53 of which the first one outputs heatmaps to generate the center point for object feature location on the output attribute feature map of darknet-53. Combining feature pyramid and CIOU loss function this algorithm is trained and tested on MSCOCO dataset, increasing the detection rate of target location and the accuracy rate of small object detection. Though resembling the state-of-the-art two-stage detectors in overall object detection accuracy speed.
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