Multi-sensor fusion is widely used in the environment perception system of the autonomous vehicle. It solves the interference caused by environmental changes and makes the whole driving system safer and more reliable. In this paper, a novel visible and near-infrared fusion method based on texture information is proposed to enhance unstructured environmental images. It aims at the problems of artifact, information loss and noise in traditional visible and near infrared image fusion methods. Firstly, the structure information of the visible image (RGB) and the near infrared image (NIR) after texture removal is obtained by relative total variation (RTV) calculation as the base layer of the fused image; secondly, a Bayesian classification model is established to calculate the noise weight and the noise information and the noise information in the visible image is adaptively filtered by joint bilateral filter; finally, the fused image is acquired by color space conversion. The experimental results demonstrate that the proposed algorithm can preserve the spectral characteristics and the unique information of visible and near-infrared images without artifacts and color distortion, and has good robustness as well as preserving the unique texture.
翻译:多传感器聚变在自主飞行器的环境感知系统中广泛使用,解决环境变化造成的干扰,使整个驱动系统更加安全和可靠。在本文件中,提议采用基于质谱信息的新型可见和近红外聚变方法,加强无结构的环境图像。目的是解决传统可见和近红外图像聚变方法中的文物、信息丢失和噪音问题。首先,通过相对总变异的计算,获得可见图像的结构信息(RGB)和纹理去除后的近红外图像(NIR),作为引信图像的基础层;其次,建立了贝叶斯分类模型,以计算噪音重量和噪音信息,可见图像中的噪音信息由联合双边过滤器进行适应性过滤;最后,通过彩色空间转换获得的链接图像。实验结果表明,拟议的算法可以维护光谱特性以及不需工艺品和色彩扭曲的可见和近红外图像的独特信息,并且具有良好的稳健性和保存独特质。