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Dynamic Sampling in Convolutional Neural Networks for Imbalanced Data Classification

机译:卷积神经网络中的动态采样用于不平衡数据分类

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Many multimedia systems stream real-time visual data continuously for a wide variety of applications. These systems can produce vast amounts of data, but few studies take advantage of the versatile and real-time data. This paper presents a novel model based on the Convolutional Neural Networks (CNNs) to handle such imbalanced and heterogeneous data and successfully identifies the semantic concepts in these multimedia systems. The proposed model can discover the semantic concepts from the data with a skewed distribution using a dynamic sampling technique. The paper also presents a system that can retrieve real-time visual data from heterogeneous cameras, and the run-time environment allows the analysis programs to process the data from thousands of cameras simultaneously. The evaluation results in comparison with several state-of-the-art methods demonstrate the ability and effectiveness of the proposed model on visual data captured by public network cameras.
机译:许多多媒体系统连续不断地为各种应用流式传输实时可视数据。这些系统可以产生大量数据,但是很少有研究利用多功能实时数据的优势。本文提出了一种基于卷积神经网络(CNN)的新颖模型来处理这种不平衡和异构的数据,并成功地识别了这些多媒体系统中的语义概念。提出的模型可以使用动态采样技术从偏斜分布的数据中发现语义概念。本文还提出了一种可以从异构摄像机检索实时视觉数据的系统,并且运行时环境允许分析程序同时处理来自数千个摄像机的数据。与几种最新方法相比,评估结果证明了该模型对公共网络摄像机捕获的视觉数据的能力和有效性。

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