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Application of genetic algorithm for broad learning system optimization

机译:遗传算法在广泛学习系统优化中的应用

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In order to solve the problem of waste of resources and low monitoring efficiency caused by Container Freight Station (CFS) safety helmet detection mainly relying on manual operations. The Broad Learning System (BLS) optimized by Genetic Algorithm (GA) is selected as the image recognition classifier for helmet detection, which accurately and quickly marks the images of CFS workers who do not wear safety helmet in the video and issues an early warning. GA is a method of searching for the optimal solution by simulating the natural evolution process. While comparing it with initial BLS, BLS optimized by GA (GA-BLS) can automatically constructs network structure and tunes hyperparameters. Furthermore, using proposed method in safety helmet data set reaches a lower error, reduces operation time than initial BLS and other image detection method, such as support vector machine (SVM).
机译:为了解决资源浪费的问题和集装箱货运站(CFS)安全帽检测造成的低监测效率主要依靠手动操作。通过遗传算法(GA)优化的广泛学习系统(BLS)作为用于头盔检测的图像识别分类器,这准确顺利地标记了在视频中不佩戴安全帽的CFS工人的图像并发出预警。 GA是通过模拟自然演进过程来搜索最佳解决方案的方法。在将其与初始BLS进行比较时,由GA(GA-BLS)优化的BLS可以自动构建网络结构和曲调超级参数。此外,在安全头盔数据集中使用所提出的方法达到较低的误差,减少了比初始BLS和其他图像检测方法的操作时间,例如支持向量机(SVM)。

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