计算机科学
块(置换群论)
特征(语言学)
增采样
核(代数)
双线性插值
修补
领域(数学)
架空(工程)
人工智能
分割
利用
目标检测
计算机工程
钥匙(锁)
机器学习
计算机视觉
图像(数学)
程序设计语言
计算机安全
组合数学
哲学
语言学
纯数学
数学
几何学
作者
Jiaqi Wang,Kai Chen,Rui Xu,Ziwei Liu,Chen Change Loy,Dahua Lin
标识
DOI:10.1109/iccv.2019.00310
摘要
Feature upsampling is a key operation in a number of modern convolutional network architectures, e.g. feature pyramids. Its design is critical for dense prediction tasks such as object detection and semantic/instance segmentation. In this work, we propose Content-Aware ReAssembly of FEatures (CARAFE), a universal, lightweight and highly effective operator to fulfill this goal. CARAFE has several appealing properties: (1) Large field of view. Unlike previous works (e.g. bilinear interpolation) that only exploit subpixel neighborhood, CARAFE can aggregate contextual information within a large receptive field. (2) Content-aware handling. Instead of using a fixed kernel for all samples (e.g. deconvolution), CARAFE enables instance-specific content-aware handling, which generates adaptive kernels on-the-fly. (3) Lightweight and fast to compute. CARAFE introduces little computational overhead and can be readily integrated into modern network architectures. We conduct comprehensive evaluations on standard benchmarks in object detection, instance/semantic segmentation and inpainting. CARAFE shows consistent and substantial gains across all the tasks (1.2% AP, 1.3% AP, 1.8% mIoU, 1.1dB respectively) with negligible computational overhead. It has great potential to serve as a strong building block for future research. Code and models are available at https://github.com/open-mmlab/mmdetection.
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