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HFS: Hierarchical Feature Selection for Efficient Image Segmentation

机译:HFS:用于高效图像分割的分层特征选择

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In this paper, we propose a real-time system, Hierarchical Feature Selection (HFS), that performs image segmentation at a speed of 50 frames-per-second. We make an attempt to improve the performance of previous image segmentation systems by focusing on two aspects: (1) a careful system implementation on modern GPUs for efficient feature computation; and (2) an effective hierarchical feature selection and fusion strategy with learning. Compared with classic segmentation algorithms, our system demonstrates its particular advantage in speed, with comparable results in segmentation quality. Adopting HFS in applications like salient object detection and object proposal generation results in a significant performance boost. Our proposed HFS system (will be open-sourced) can be used in a variety computer vision tasks that are built on top of image segmentation and superpixel extraction.
机译:在本文中,我们提出了一种实时系统,即分层特征选择(HFS),该系统以每秒50帧的速度执行图像分割。我们通过着重于两个方面来尝试提高以前的图像分割系统的性能:(1)在现代GPU上仔细地实现系统以进行有效的特征计算; (2)一种有效的分层特征选择与学习融合策略。与经典分割算法相比,我们的系统展示了其在速度方面的特殊优势,并且在分割质量上具有可比的结果。在诸如显着的对象检测和对象建议生成之类的应用程序中采用HFS可以显着提高性能。我们提出的HFS系统(将是开源的)可以用于基于图像分割和超像素提取的各种计算机视觉任务。

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