Recently, some approaches are proposed to harness deep convolutional networks to facilitate superpixel segmentation. The common practice is to first evenly divide the image into a pre-defined number of grids and then learn to associate each pixel with its surrounding grids. However, simply applying a series of convolution operations with limited receptive fields can only implicitly perceive the relations between the pixel and its surrounding grids. Consequently, existing methods often fail to provide an effective context when inferring the association map. To remedy this issue, we propose a novel \textbf{A}ssociation \textbf{I}mplantation (AI) module to enable the network to explicitly capture the relations between the pixel and its surrounding grids. The proposed AI module directly implants the features of grid cells to the surrounding of its corresponding central pixel, and conducts convolution on the padded window to adaptively transfer knowledge between them. With such an implantation operation, the network could explicitly harvest the pixel-grid level context, which is more in line with the target of superpixel segmentation comparing to the pixel-wise relation. Furthermore, to pursue better boundary precision, we design a boundary-perceiving loss to help the network discriminate the pixels around boundaries in hidden feature level, which could benefit the subsequent inferring modules to accurately identify more boundary pixels. Extensive experiments on BSDS500 and NYUv2 datasets show that our method could not only achieve state-of-the-art performance but maintain satisfactory inference efficiency.
翻译:最近,提出了一些办法,以利用深卷动网络,为超级像素分割提供便利。通常的做法是首先将图像平均地分为一个预设数的网格,然后学习将每个像素与其周围网格联系起来。然而,仅仅应用一系列有限的可接收字段的共变操作,只能隐含地看到像素及其周围网格之间的关系。因此,在推断联系图时,现有方法往往无法提供一个有效的环境。为了纠正这一问题,我们提议了一个新的 & textbf{A}sociation\ textbf{I}固化(AI)模块,以使网络能够明确捕捉像素及其周围网格之间的关系。然而,拟议的AI模块直接将电动细胞的特征植入其相应的中央像素周围,并在加插窗口上进行扰动以适应性转移知识的演化。有了这样的植入操作,网络可以明确捕捉到像素-电网级背景环境,而这与超像素断层2)的实验目标更接近,使得网络能够更精确地测量精确性能水平,并显示我们更精确的边界线段系的分界关系。