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The artificial visual detection and recognition of bridges' cracks bear great dangers, therefore, we put forward a method of digital and intelligent detection of bridges fractures, combined with machine vision and the Deep Belief Network technologies. This method adopts Raspberry Pi to collect and pre-process images, to transmit images data by the GPRS / 3G or wired networks. And it uses high-level...
Forecasting deformation of surrounding rock for tunnel is a highly complicated nonlinear problem which is hard to be solved by using conventional methods. A novel method based on Gaussian Process (GP) machine learning is proposed for solving the problem of deformation prediction of surrounding rock for tunnel. GP is a newly developed machine learning method based on the strict statistical learning...
Automatic word segmentation technology is an important component part of modern Chinese information processing. It is the key technology of the Chinese full-text retrieval. This paper presents a Chinese word segmentation algorithm based on maximum entropy. It uses of part-of-speech tagging and word frequency tagging of corpus to establish maximum entropy model based on mutual information as a word...
Prediction of deformation of foundation pit by means of conventional method such as mechanics analysis or numerical method often has a large error because the deformation process of foundation pit is a highly complicated nonlinear evolution process. A novel method based on Gaussian process (GP) machine learning is proposed for solving the problem of deformation prediction of foundation pit. GP is...
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