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The Image Recognition Based on Restricted Boltzmann Machine and Deep Learning Framework

机译:基于受限玻尔兹曼机和深度学习框架的图像识别

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For the Unmanned Aerial Vehicle (UAV) has high mobility, it is adopted to reducing the difficulty in the patrolling of electric power line is a hard work by manual way. However, the judgment of damaged poles is still carried out by the patroller which is inefficient and fallible. So the method with artificial intelligence is considered to be introduced that a novel method is proposed in this paper to improve the recognition effect in complex background. Restricted Boltzmann Machine (RBM) is used to instead the full connected layers of faster regions with convolutional neural network (faster RCNN). For RBM has the ability of unsupervised learning, with the RBM and faster RCNN combined, it can reduce the training samples and influence of different background in the images to be identified. The experimental results show that the proposed model takes effects on the recognition of the wire poles in the distribution network which has practical value.
机译:由于无人机具有较高的机动性,因此采用这种方式来减少电力线巡逻的难度是手工作业的一项艰巨的工作。但是,巡逻员仍然要进行判断是否损坏的杆,这效率低下且容易出错。因此,考虑引入人工智能方法,提出一种新的方法来提高复杂背景下的识别效果。受限玻尔兹曼机(RBM)用于代替具有卷积神经网络(速度更快的RCNN)的速度更快的区域的全连接层。由于RBM具有无监督学习的能力,因此将RBM与更快的RCNN结合使用,可以减少训练样本和不同背景对待识别图像的影响。实验结果表明,该模型对配电网中电线杆的识别有一定的实用价值。

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