He Pei-Pei, Wan You-Chuan, Jiang Peng-Rui, Gao Xian-Jun, Qin Jia-Xin
Guang Pu Xue Yu Guang Pu Fen Xi. 2014 Jul;34(7):1927-32.
In order to achieve housing automatic detection from high-resolution aerial imagery, the present paper utilized the color information and spectral characteristics of the roofing material, with the image segmentation theory, to study the housing automatic detection method. Firstly, This method proposed in this paper converts the RGB color space to HIS color space, uses the characteristics of each component of the HIS color space and the spectral characteristics of the roofing material for image segmentation to isolate red tiled roofs and gray cement roof areas, and gets the initial segmentation housing areas by using the marked watershed algorithm. Then, region growing is conducted in the hue component with the seed segment sample by calculating the average hue in the marked region. Finally through the elimination of small spots and rectangular fitting process to obtain a clear outline of the housing area. Compared with the traditional pixel-based region segmentation algorithm, the improved method proposed in this paper based on segment growing is in a one-dimensional color space to reduce the computation without human intervention, and can cater to the geometry information of the neighborhood pixels so that the speed and accuracy of the algorithm has been significantly improved. A case study was conducted to apply the method proposed in this paper to high resolution aerial images, and the experimental results demonstrate that this method has a high precision and rational robustness.
为了实现从高分辨率航空影像中自动检测房屋,本文利用屋顶材料的颜色信息和光谱特征,结合图像分割理论,研究房屋自动检测方法。首先,本文提出的方法将RGB颜色空间转换为HIS颜色空间,利用HIS颜色空间各分量的特征以及屋顶材料的光谱特征进行图像分割,以分离红色瓦片屋顶和灰色水泥屋顶区域,并使用标记分水岭算法得到初始分割的房屋区域。然后,通过计算标记区域内的平均色调,在色调分量中以种子段样本进行区域生长。最后,通过消除小斑点和矩形拟合过程,获得房屋区域清晰的轮廓。与传统的基于像素的区域分割算法相比,本文提出的基于段生长的改进方法在一维颜色空间中进行,减少了计算量且无需人工干预,并且能够顾及邻域像素的几何信息,从而显著提高了算法的速度和准确性。进行了案例研究,将本文提出的方法应用于高分辨率航空影像,实验结果表明该方法具有较高的精度和合理的稳健性。