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A neural network approach to key frame extraction

机译:关键帧提取的神经网络方法

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摘要

We present a neural network based approach to key frame extraction in the compressed domain. The proposed method is an amalgamation of both the MPEG-7 descriptors namely motion intensity descriptor and spatial activity descriptor. Shot boundary detection and block motion estimation techniques are employed prior to the extraction of the descriptors. The motion intensity (“pace of action”) is obtained using a fuzzy system that classifies the motion intensity into five categories proportional to the intensity. The spatial activity matrix determines the spatial distribution of activity (“active regions”) in a frame. A neural network is used to pick those frames as key frames which have high intensity and maximum spatial activity at the center of the frame. Results are compared against two well-known key frame extraction techniques to demonstrate the advantage and robustness of the proposed approach. Results show that the neural network approach performs much better than selecting first frame of the shot as a key frame and selecting middle frame of the shot as a key frame methods.
机译:我们提出了一种基于神经网络的压缩域中关键帧提取方法。所提出的方法是将MPEG-7描述符(即运动强度描述符和空间活动描述符)合并在一起的。在提取描述符之前采用镜头边界检测和块运动估计技术。使用模糊系统获得运动强度(“动作步幅”),该系统将运动强度分为与强度成比例的五类。空间活动矩阵确定帧中活动(“活动区域”)的空间分布。使用神经网络将那些帧选为关键帧,这些关键帧在帧中心具有高强度和最大的空间活动。将结果与两种众所周知的关键帧提取技术进行比较,以证明所提出方法的优势和鲁棒性。结果表明,与选择镜头的第一帧作为关键帧并选择镜头的中间帧作为关键帧方法相比,神经网络方法的性能要好得多。

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