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红外与可见光图像融合技术及应用综述。

Infrared and Visible Image Fusion Technology and Application: A Review.

机构信息

Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China.

School of Electrical Engineering, Chongqing University of Science & Technology, Chongqing 401331, China.

出版信息

Sensors (Basel). 2023 Jan 4;23(2):599. doi: 10.3390/s23020599.

Abstract

The images acquired by a single visible light sensor are very susceptible to light conditions, weather changes, and other factors, while the images acquired by a single infrared light sensor generally have poor resolution, low contrast, low signal-to-noise ratio, and blurred visual effects. The fusion of visible and infrared light can avoid the disadvantages of two single sensors and, in fusing the advantages of both sensors, significantly improve the quality of the images. The fusion of infrared and visible images is widely used in agriculture, industry, medicine, and other fields. In this study, firstly, the architecture of mainstream infrared and visible image fusion technology and application was reviewed; secondly, the application status in robot vision, medical imaging, agricultural remote sensing, and industrial defect detection fields was discussed; thirdly, the evaluation indicators of the main image fusion methods were combined into the subjective evaluation and the objective evaluation, the properties of current mainstream technologies were then specifically analyzed and compared, and the outlook for image fusion was assessed; finally, infrared and visible image fusion was summarized. The results show that the definition and efficiency of the fused infrared and visible image had been improved significantly. However, there were still some problems, such as the poor accuracy of the fused image, and irretrievably lost pixels. There is a need to improve the adaptive design of the traditional algorithm parameters, to combine the innovation of the fusion algorithm and the optimization of the neural network, so as to further improve the image fusion accuracy, reduce noise interference, and improve the real-time performance of the algorithm.

摘要

单个可见光传感器获取的图像对光照条件、天气变化等因素非常敏感,而单个红外光传感器获取的图像通常分辨率较差、对比度低、信噪比较低、视觉效果模糊。可见光和红外光的融合可以避免两个单传感器的缺点,并在融合两个传感器的优点的同时,显著提高图像的质量。红外光和可见光的融合广泛应用于农业、工业、医学等领域。在本研究中,首先回顾了主流的红外光和可见光图像融合技术和应用的体系结构;其次,讨论了其在机器人视觉、医学成像、农业遥感和工业缺陷检测领域的应用现状;再次,将主要图像融合方法的评价指标结合到主观评价和客观评价中,然后具体分析和比较当前主流技术的特性,并对图像融合的前景进行评估;最后,总结了红外光和可见光图像融合。结果表明,融合后的红外光和可见光图像的清晰度和效率都有了显著提高。然而,仍存在一些问题,如融合图像的精度较差,以及像素不可挽回地丢失等。需要改进传统算法参数的自适应设计,结合融合算法的创新和神经网络的优化,进一步提高图像融合的准确性,减少噪声干扰,提高算法的实时性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/53f1/9862268/d38cfedb89b3/sensors-23-00599-g001.jpg

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