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Salient Object Detection in the Distributed Cloud-Edge Intelligent Network

机译:分布式云智能网络中的突出对象检测

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摘要

Intelligent network is crucial in the building of telecom networks because it utilizes artificial intelligent technologies to improve the performance. Salient object detection has increasingly attracted interest from intelligent network research since estimating human attention to objects is a crucial step in various surveillance applications. However, the computational-consuming and memory-consuming detection model is still less effective when it is deployed only either on the cloud or on the edge. In this article, we propose a specially-designed cloud-edge distributed framework for salient object detection based on the intelligent network. This framework can overcome the difficulty to transmit massive data in the cloud-only deployment scheme, as well as the difficulty to analyze massive data in the edge-only deployment scheme. However, the traditional cloud-edge distributed schemes are unsuitable to salient object detection task because of two challenges: 1) balance between the within-semantic knowledge and cross-semantic knowledge for the model training in different servers; 2) contradiction between extracting the semantic knowledge with global contextual information and local detailed information. To tackle the first challenge, our framework enables a hierarchical information allocation strategy in the cloud. It can prompt the salient object detection model in the edge to learn more from the similar scenes or semantics with where the edge server is located, while preserving the generalization ability of the model in the different scenes. To address the second challenge, our framework proposes a novel pyramidal deep learning model. It can effectively capture the global contextual features of the salient object, while preserving its local detailed features. The extensive experiments performed on six commonly- used public datasets can demonstrate the effectiveness of our framework and its superiority to 11 state-of-the-art approaches.
机译:智能网络在电信网络建设中至关重要,因为它利用人工智能技术来提高性能。突出物体检测越来越引起智能网络研究的兴趣,因为估计人类注意对象是各种监视应用中的重要步骤。但是,当仅在云或边缘上部署时,计算消耗和内存消耗的检测模型仍然不那么有效。在本文中,我们提出了一种基于智能网络的特殊设计的云边缘分布式框架,用于突出对象检测。此框架可以克服难以在云部署方案中传输大规模数据的困难,以及难以分析仅限于边缘部署方案中的大规模数据。然而,由于两个挑战,传统的云边缘分布式方案不适合突出的对象检测任务:1)在不同服务器中模型训练的语义内知识和交叉语义知识之间的平衡; 2)用全球上下文信息和本地详细信息提取语义知识之间的矛盾。为了解决第一个挑战,我们的框架可以在云中启用分层信息分配策略。它可以提示边缘中的突出对象检测模型从边缘服务器所在的类似场景或语义中了解更多信息,同时保留在不同场景中模型的泛化能力。为了解决第二个挑战,我们的框架提出了一种新的金字塔深度学习模式。它可以有效地捕获突出对象的全局上下文功能,同时保留其本地详细功能。在六个常用的公共数据集上进行的广泛实验可以展示我们框架的有效性及其对11个最先进的方法的优势。

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