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SCPNet: Self-constrained parallelism network for keypoint-based lightweight object detection

机译:SCPNet:用于基于关键点的轻量级目标检测的自约束并行网络

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? 2022 Elsevier Inc.Keypoint-based object detection achieves better performance without positioning calculations and extensive prediction. However, they have heavy backbone, and high-resolution is restored using upsampling that obtain unreliable features. We propose a self-constrained parallelism keypoint-based lightweight object detection network (SCPNet), which speeds inference, drops parameters, widens receptive fields, and makes prediction accurate. Specifically, the parallel multi-scale fusion module (PMFM) with parallel shuffle blocks (PSB) adopts parallel structure to obtain reliable features and reduce depth, adopts repeated multi-scale fusion to avoid too many parallel branches. The self-constrained detection module (SCDM) has a two-branch structure, with one branch predicting corners, and employing entad offset to match high-quality corner pairs, and the other branch predicting center keypoints. The distances between the paired corners’ geometric centers and the center keypoints are used for self-constrained detection. On MS-COCO 2017 and PASCAL VOC, SCPNet's results are competitive with the state-of-the-art lightweight object detection. https://github.com/mengdie-wang/SCPNet.git.
机译:?2022 Elsevier Inc.基于Keypoint的物体检测无需定位计算和大量预测即可实现更好的性能。但是,它们具有沉重的骨干,并且使用获得不可靠特征的上采样来恢复高分辨率。我们提出了一种基于自约束并行关键点的轻量级目标检测网络(SCPNet),该网络可以加快推理速度,删除参数,拓宽感受野,并使预测准确。具体而言,并行多尺度融合模块(PMFM)采用平行结构,以获得可靠的特征并降低深度,采用重复多尺度融合,避免了过多的平行分支。自约束检测模块(SCDM)具有双分支结构,一个分支预测角,并利用entad偏移来匹配高质量的角对,另一个分支预测中心关键点。配对角的几何中心与中心关键点之间的距离用于自约束检测。在MS-COCO 2017和PASCAL VOC上,SCPNet的结果与最先进的轻量级物体检测相比具有竞争力。https://github.com/mengdie-wang/SCPNet.git。

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