Department of Computer Engineering, University of Baghdad, Al-Jadriya, Baghdad 10071, Iraq.
Department of Electronic and Electrical Engineering, University of Sheffield, Sheffield S1 4ET, UK.
Sensors (Basel). 2022 Nov 26;22(23):9209. doi: 10.3390/s22239209.
Three-dimensional (3D) image and medical image processing, which are considered big data analysis, have attracted significant attention during the last few years. To this end, efficient 3D object recognition techniques could be beneficial to such image and medical image processing. However, to date, most of the proposed methods for 3D object recognition experience major challenges in terms of high computational complexity. This is attributed to the fact that the computational complexity and execution time are increased when the dimensions of the object are increased, which is the case in 3D object recognition. Therefore, finding an efficient method for obtaining high recognition accuracy with low computational complexity is essential. To this end, this paper presents an efficient method for 3D object recognition with low computational complexity. Specifically, the proposed method uses a fast overlapped technique, which deals with higher-order polynomials and high-dimensional objects. The fast overlapped block-processing algorithm reduces the computational complexity of feature extraction. This paper also exploits Charlier polynomials and their moments along with support vector machine (SVM). The evaluation of the presented method is carried out using a well-known dataset, the McGill benchmark dataset. Besides, comparisons are performed with existing 3D object recognition methods. The results show that the proposed 3D object recognition approach achieves high recognition rates under different noisy environments. Furthermore, the results show that the presented method has the potential to mitigate noise distortion and outperforms existing methods in terms of computation time under noise-free and different noisy environments.
三维(3D)图像和医学图像处理被认为是大数据分析,近年来引起了广泛关注。为此,高效的 3D 目标识别技术可能有益于这些图像和医学图像处理。然而,迄今为止,大多数用于 3D 目标识别的方法在计算复杂度方面都面临着重大挑战。这是因为当物体的维度增加时,计算复杂度和执行时间都会增加,而这正是 3D 物体识别的情况。因此,找到一种高效的方法,在低计算复杂度的情况下获得高识别精度是至关重要的。为此,本文提出了一种用于 3D 目标识别的高效方法,具有低计算复杂度。具体来说,所提出的方法使用快速重叠技术来处理高阶多项式和高维物体。快速重叠块处理算法降低了特征提取的计算复杂度。本文还利用了 Charlier 多项式及其矩以及支持向量机(SVM)。利用著名的 McGill 基准数据集对所提出的方法进行了评估。此外,还与现有的 3D 目标识别方法进行了比较。结果表明,所提出的 3D 目标识别方法在不同的噪声环境下具有较高的识别率。此外,结果表明,在所提出的方法在无噪声和不同噪声环境下,在计算时间方面具有减轻噪声失真的潜力,并优于现有方法。