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Deep Feature Pyramid Reconfiguration for Object Detection

机译:用于对象检测的深度特征金字塔重新配置

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State-of-the-art object detectors usually learn multi-scale representations to get better results by employing feature pyramids. However, the current designs for feature pyramids are still inefficient to integrate the semantic information over different scales. In this paper, we begin by investigating current feature pyramids solutions, and then reformulate the feature pyramid construction as the feature reconfiguration process. Finally, we propose a novel reconfiguration architecture to combine low-level representations with high-level semantic features in a highly-nonlinear yet efficient way. In particular, our architecture which consists of global attention and local reconfigurations, is able to gather task-oriented features across different spatial locations and scales, globally and locally. Both the global attention and local reconfiguration are lightweight, in-place, and end-to-end trainable. Using this method in the basic SSD system, our models achieve consistent and significant boosts compared with the original model and its other variations, without losing real-time processing speed.
机译:最先进的对象探测器通常学习多尺度表示,通过采用功能金字塔来获得更好的结果。但是,特征金字塔的当前设计仍然低效,可以通过不同的尺度集成语义信息。在本文中,我们首先通过调查电流特征金字塔解决方案,然后将特征金字塔结构进行重新格式化为特征重新配置。最后,我们提出了一种新颖的重新配置架构,以将具有高级别语义特征的低级表示以高度非线性但有效的方式。特别是,我们包含全球关注和本地重建的架构,可以在全球和本地地区地区收集不同空间位置和尺度的面向任务的功能。全球关注和本地重新配置都是重量轻,就地和最终的培训。在基本SSD系统中使用此方法,我们的模型与原始模型及其其他变体相比,我们的模型实现了一致而显着的提升,而不会失去实时处理速度。

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