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Correlation-Based Deep Learning for Multimedia Semantic Concept Detection

机译:基于关联的深度学习在多媒体语义概念检测中的应用

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Nowadays, concept detection from multimedia data is considered as an emerging topic due to its applicability to various applications in both academia and industry. However, there are some inevitable challenges including the high volume and variety of multimedia data as well as its skewed distribution. To cope with these challenges, in this paper, a novel framework is proposed to integrate two correlation-based methods, Feature-Correlation Maximum Spanning Tree (FC-MST) and Negative-based Sampling (NS), with a well-known deep learning algorithm called Convolutional Neural Network (CNN). First, FC-MST is introduced to select the most relevant low-level features, which are extracted from multiple modalities, and to decide the input layer dimension of the CNN. Second, NS is adopted to improve the batch sampling in the CNN. Using NUS-WIDE image data set as a web-based application, the experimental results demonstrate the effectiveness of the proposed framework for semantic concept detection, comparing to other well-known classifiers.
机译:如今,由于多媒体数据的概念检测适用于学术界和工业界的各种应用,因此被认为是一个新兴的话题。但是,存在一些不可避免的挑战,包括多媒体数据量大,种类繁多以及分布不均。为了应对这些挑战,本文提出了一个新颖的框架,该框架将两种基于相关的方法(特征相关最大生成树(FC-MST)和基于负值的采样(NS))与著名的深度学习相集成称为卷积神经网络(CNN)的算法。首先,引入FC-MST来选择最相关的低级特征,这些特征是从多种模式中提取的,并确定CNN的输入层尺寸。其次,采用NS来改善CNN中的批量采样。与其他知名分类器相比,使用NUS-WIDE图像数据集作为基于Web的应用程序,实验结果证明了所提出的语义概念检测框架的有效性。

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