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Employing Deep Part-Object Relationships for Salient Object Detection

机译:利用深层零件-对象关系进行显着物体检测

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Despite Convolutional Neural Networks (CNNs) based methods have been successful in detecting salient objects, their underlying mechanism that decides the salient intensity of each image part separately cannot avoid inconsistency of parts within the same salient object. This would ultimately result in an incomplete shape of the detected salient object. To solve this problem, we dig into part-object relationships and take the unprecedented attempt to employ these relationships endowed by the Capsule Network (CapsNet) for salient object detection. The entire salient object detection system is built directly on a Two-Stream Part-Object Assignment Network (TSPOANet) consisting of three algorithmic steps. In the first step, the learned deep feature maps of the input image are transformed to a group of primary capsules. In the second step, we feed the primary capsules into two identical streams, within each of which low-level capsules (parts) will be assigned to their familiar high-level capsules (object) via a locally connected routing. In the final step, the two streams are integrated in the form of a fully connected layer, where the relevant parts can be clustered together to form a complete salient object. Experimental results demonstrate the superiority of the proposed salient object detection network over the state-of-the-art methods.
机译:尽管基于卷积神经网络(CNN)的方法已成功检测出显着物体,但是它们各自决定每个图像部分的显着强度的基本机制仍无法避免同一显着物体内各部分的不一致。这最终将导致检测到的显着物体的形状不完整。为了解决这个问题,我们深入研究了零件与对象的关系,并进行了空前的尝试,将胶囊网络(CapsNet)赋予的这些关系用于显着对象检测。整个显着目标检测系统直接建立在两流部分目标分配网络(TSPOANet)上,该网络由三个算法步骤组成。第一步,将学习到的输入图像的深度特征图转换为一组初级胶囊。在第二步中,我们将主胶囊馈送到两个相同的流中,在每个流中,低级胶囊(部分)将通过本地连接的路由分配给它们熟悉的高级胶囊(对象)。在最后一步中,两个流以完全连接的层的形式集成在一起,其中相关部​​分可以聚集在一起以形成一个完整的显着对象。实验结果表明,所提出的显着物体检测网络优于最新方法。

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