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High-dimensional multimedia classification using deep CNN and extended residual units

机译:使用深度CNN和扩展残差单元的高维多媒体分类

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摘要

Processing multimedia data has emerged as a key area for the application of machine learning methods Building a robust classification model to use in high dimensional space requires the combination of a deep feature extractor and a powerful classifier. We present a new classification pipeline to facilitate multimedia data analysis based on convolutional neural network and the modified residual network which can integrate with the other feedforward network style in an endwise training fashion. The proposed residual network is producing attention-aware features. We proposed a unified deep CNN model to achieve promising performance in classifying high dimensional multimedia data by getting the advantages of the residual network. In every residual module, up-down and vice-versa feedforward structure is implemented to unfold the feedforward and backward process into a unique process. The hybrid proposed model evaluated on four datasets and have been shown promising results which outperform the previous best results. Last but not the least, the proposed model achieves detection speeds that are much faster than other approaches.
机译:处理多媒体数据已成为机器学习方法应用的关键领域。建立要在高维空间中使用的强大分类模型,需要结合深度特征提取器和强大的分类器。我们提出了一种新的分类管道,以促进基于卷积神经网络和经过改进的残差网络的多媒体数据分析,该残差网络可以以最终训练方式与其他前馈网络样式集成。提议的残差网络正在产生关注意识的功能。我们提出了一个统一的深度CNN模型,以通过利用残差网络的优势来实现对高维多媒体数据进行分类的有希望的性能。在每个残差模块中,均实现了上下的前馈结构,以将前馈和后退过程展开为唯一的过程。提出的混合模型在四个数据集上进行了评估,并显示出令人鼓舞的结果,其表现优于先前的最佳结果。最后但并非最不重要的一点是,所提出的模型实现的检测速度比其他方法快得多。

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