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Intelligent Monitoring Method of Short-Distance Swimming Physical Function Fatigue Limit Mobile Calculation

机译:短距离游泳物理功能疲劳极限移动计算的智能监测方法

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The detection and classification of moving targets have always been a key technology in intelligent video surveillance. Current detection and classification algorithms for moving targets still face many difficulties, mainly because of the complexity of the monitoring environment and the limitations of target characteristics. Therefore, this article conducts corresponding research on moving target detection and classification in intelligent video surveillance. According to the Gaussian Mixture Background Model and Frame Difference Method, this paper proposes a moving target detection method based on GMM (Gaussians Mixture Model) and Frame Difference Method. This method first proposes a new image combination algorithm that combines GMM and frame difference method, which solves the problems of noise and voids inside the target caused by the fusion of traditional GMM and frame difference method. The moving target detection method can effectively solve the problems of incomplete moving target detection, target internal gap, and noise, and it plays a vital role in the subsequent moving target classification process. Then, the method adds image inpainting technology to compensate the moving target in space and obtain a better target shape. The innovation of this paper is that in order to solve the multiobject classification problem, a binary tree decision support vector machine based on statistical learning is constructed as a classifier for moving object classification. Improve the learning efficiency of the classifier, solve the competitive classification problem of the traditional SVM, and increase the efficiency of the mobile computing intelligent monitoring method by more than 70%.
机译:移动目标的检测和分类一直是智能视频监控的关键技术。移动目标的电流检测和分类算法仍面临着许多困难,主要是因为监测环境的复杂性和目标特征的局限性。因此,本文对智能视频监测中的目标检测和分类进行了相应的研究。根据高斯混合背景模型和框架差法方法,本文提出了一种基于GMM(高斯混合模型)和帧差法的移动目标检测方法。该方法首先提出了一种新的图像组合算法,该算法结合了GMM和帧差制方法,该算法解决了由传统GMM和帧差法融合引起的目标内部噪声和空隙的问题。移动目标检测方法可以有效地解决不完全移动目标检测,目标内部间隙和噪声的问题,并且在随后的移动目标分类过程中起着至关重要的作用。然后,该方法增加图像修复技术以补偿空间中的移动目标并获得更好的目标形状。本文的创新是为了解决多机测分类问题,基于统计学习的二进制树决策支持向量机被构造为用于移动对象分类的分类器。提高分类器的学习效率,解决传统SVM的竞争分类问题,并提高移动计算智能监测方法的效率超过70%。

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