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Machine Intelligence Prospective for Large Scale Video based Visual Activities Analysis

机译:基于大规模视频的视觉活动分析的机器智能前景

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Machine learning has been proved highly active research to solve data analytics problems by last few decades. Real life video analysis comprises highly unstructured and complex data which challenge the storage capacity and modern machine intelligence. Due to large scale of data continuously developed by several sensors in every domain of social media, traditional machine learning approaches fail to deal with huge amount of data. Social media analytics may have high range of activities like business, financial, research, medicine and entertainment. In this work, we focus on unstructured data of visualactivities social media in unconstraint environment. We discuss the issues of complex data sets like Hollywood2, ImageNet, HMBD and UCF as a big data prospective and introduce how deep learning techniques are efficient to resolve the detection and recognition issues. Recent developments of deep learning, Convolutional 3D, RCNN, LSTM, SSD, YOLO and its fastest versions, YOLO9000 have been discussed for solving highly massive data analytics problems. Deep learning is still in scope to resolve many issues like VGGNet16 outperforms to the higher layer network VGGNet19 and what if the perceptive area of the nodes at every layer does not keep fixed size. It has been concluded that this work produces a sounding challenge of unstructured and large scale training data of video analytics and frame out deep learning aspects to resolve the social media activity issues in unconstraint environment. This research leads highly resourceful scope for data science problems in various fields of study in which high performance computing is expected.
机译:在过去的几十年中,已经证明机器学习是解决数据分析问题的高度活跃的研究。现实生活中的视频分析包含高度非结构化和复杂的数据,这些数据对存储容量和现代机器智能提出了挑战。由于社交媒体每个领域中的多个传感器不断开发的海量数据,传统的机器学习方法无法处理大量数据。社交媒体分析可能具有广泛的活动,例如商业,金融,研究,医学和娱乐。在这项工作中,我们专注于不受约束的环境中视觉活动社交媒体的非结构化数据。我们将讨论复杂的数据集(例如Hollywood2,ImageNet,HMBD和UCF)作为大数据的前景,并介绍深度学习技术如何有效解决检测和识别问题。讨论了深度学习的最新发展,卷积3D,RCNN,LSTM,SSD,YOLO及其最快的版本YOLO9000,用于解决海量数据分析问题。深度学习仍在解决许多问题的范围内,例如VGGNet16胜过高层网络VGGNet19,以及如果每层节点的感知区域不保持固定大小,该怎么办。可以得出的结论是,这项工作对视频分析的非结构化和大规模培训数据提出了严峻的挑战,并提出了深度学习方面的内容,以解决不受约束的环境中的社交媒体活动问题。这项研究为期望高性能计算的各个研究领域中的数据科学问题提供了非常丰富的资源。

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