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Semantic Filtering

机译:语义过滤

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摘要

Edge-preserving image operations aim at smoothing an image without blurring the edges. Many excellent edge-preserving filtering techniques have been proposed recently to reduce the computational complexity or/and separate different scale structures. They normally adopt a user-selected scale measurement to control the detail/texture smoothing. However, natural photos contain objects of different sizes which cannot be described by a single scale measurement. On the other hand, edge/contour detection/ analysis is closely related to edge-preserving filtering and has achieved significant progress recently. Nevertheless, most of the state-of-the-art filtering techniques ignore the success in this area. Inspired by the fact that learning-based edge detectors/classifiers significantly outperform traditional manually-designed detectors, this paper proposes a learning-based edge-preserving filtering technique. It synergistically combines the efficiency of the recursive filter and the effectiveness of the recent edge detector for scale-aware edge-preserving filtering. Unlike previous filtering methods, the propose filter can efficiently extract subjectively-meaningful structures from natural scenes containing multiple-scale objects.
机译:保留边缘的图像操作旨在使图像平滑而不模糊边缘。最近已经提出了许多优秀的边缘保留滤波技术,以减少计算复杂度或/和分离不同的比例结构。他们通常采用用户选择的比例尺测量来控制细节/纹理平滑。但是,自然照片包含不同大小的对象,无法通过单个比例尺测量来描述。另一方面,边缘/轮廓检测/分析与边缘保留滤波紧密相关,并且最近已经取得了重大进展。尽管如此,大多数最新的过滤技术都忽略了这一领域的成功。受基于学习的边缘检测器/分类器明显优于传统的手动设计检测器的启发,本文提出了一种基于学习的边缘保留滤波技术。它协同地结合了递归滤波器的效率和最新的边缘检测器对比例感知边缘保持滤波的有效性。与以前的过滤方法不同,提议的过滤器可以从包含多尺度对象的自然场景中有效地提取主观有意义的结构。

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