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Global and Local Multi-scale Feature Fusion for Object Detection and Semantic Segmentation

机译:用于对象检测和语义分割的全局和局部多尺度特征融合

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Feature fusion approaches have been widely used in object detection and semantic segmentation to improve accuracy. Global feature fusion integrates semantic information and detail spatial information. Combining the fine feature maps in the bottom-up stage and the coarse feature maps in the top-down stage is very effective in the network where it is necessary to understand the contextual information of a given image. In this paper, we propose a method to integrate multiple feature maps in the local region as well as global feature fusion. Local multi-scale feature fusion integrates neighboring feature maps from different levels and scales to get a more diverse range of receptive fields with less computation while keeping detail appearance information. Experimental results demonstrate that the proposed network, which is based on the global and local feature fusion, achieves competitive accuracy with real-time inference speed in semantic segmentation and object detection tasks over the previous state-of-the-art methods.
机译:特征融合方法已广泛用于对象检测和语义分割,以提高准确性。全局特征融合集成了语义信息和详细的空间信息。在必须了解给定图像的上下文信息的网络中,将自下而上阶段的精细特征图与自上而下阶段的粗略特征图结合起来非常有效。在本文中,我们提出了一种在局部区域中集成多个特征图以及全局特征融合的方法。局部多尺度特征融合将不同级别和尺度的相邻特征图集成在一起,从而在保持细节外观信息的同时,以较少的计算量获得了范围更广的接收场。实验结果表明,所提出的网络基于全局和局部特征融合,在语义分割和对象检测任务方面比以前的最新方法具有竞争优势,并具有实时推理速度。

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