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Infrared Image Recognition Technology Based on Visual Processing and Deep Learning

机译:基于视觉处理和深度学习的红外图像识别技术

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Infrared image recognition in substation is always a difficult problem. In order to solve the problem of recognition of knife gate, insulator and other components in infrared image, the target location technology of deep learning is proposed to realize the detection and recognition of typical components in infrared image, and the multi-target detection algorithm YOLO is selected to locate and identify the defects. Firstly, the image preprocessing technology is used to process the collected image, so as to filter the interference of background and other factors on the equipment identification. Then, the infrared image is detected by the YOLO target detection model based on multi feature fusion, so as to locate the position of inspection equipment in the infrared image. Then, the type of equipment is identified by the trained equipment classification model. Finally, the algorithm is tested with a large number of pictures in the substation scene.
机译:变电站中的红外图像识别始终是一个难题。为了解决红外图像中刀栅,绝缘体和其他组件的识别问题,提出了深度学习的目标位置技术,以实现红外图像中典型组件的检测和识别,以及多目标检测算法YOLO被选中定位并识别缺陷。首先,使用图像预处理技术来处理收集的图像,以便过滤背景和其他因素的干扰对设备识别。然后,基于多特征融合的Yolo目标检测模型检测红外图像,从而定位红外图像中的检查设备的位置。然后,通过训练有素的设备分类模型识别设备类型。最后,在变电站场景中使用大量图片进行测试。

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