基于神经网络的足球视频目标事件检测框架

Kasun Wickramaratna, Min Chen, Shu‐Ching Chen, M. Shyu
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引用次数: 30

摘要

本文提出了一种基于神经网络的足球视频语义事件检测框架。该框架通过结合多模态分析的强度和神经网络集成的能力来减少泛化误差,为足球进球事件检测提供了一个鲁棒的解决方案。由于目标事件的稀缺性,利用训练集上的自举抽样方法来提高目标事件检测的召回率。然后使用所有可用的训练数据训练一组组件网络。通过以下两个步骤,大大提高了检测的精度。首先对测试集进行预滤波,减少噪声和不一致数据,然后提出一种先进的加权方案,综合考虑各网络的预测性能,对各分量网络预测进行智能遍历和组合。设计了一组实验来比较不同自举采样方案的性能,展示所提出的加权方案在事件检测中的强度,并证明我们的框架在足球目标事件检测中的有效性。
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Neural network based framework for goal event detection in soccer videos
In this paper, a neural network based framework for semantic event detection in soccer videos is proposed. The framework provides a robust solution for soccer goal event detection by combining the strength of multimodal analysis and the ability of neural network ensembles to reduce the generalization error. Due to the rareness of the goal events, the bootstrapped sampling method on the training set is utilized to enhance the recall of goal event detection. Then a group of component networks are trained using all the available training data. The precision of the detection is greatly improved via the following two steps. First, a pre-filtering step is employed on the test set to reduce the noisy and inconsistent data, and then an advanced weighting scheme is proposed to intelligently traverse and combine the component network predictions by taking into consideration the prediction performance of each network. A set of experiments are designed to compare the performance of different bootstrapped sampling schemes, to present the strength of the proposed weighting scheme in event detection, and to demonstrate the effectiveness of our framework for soccer goal event detection.
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