Magnier Baptiste, Hayat Khizar
Euromov Digital Health in Motion, Univ Montpellier, IMT Mines Ales, Ales, France.
College of Arts and Sciences, University of Nizwa, Nizwa 616, Oman.
Sensors (Basel). 2023 Oct 23;23(20):8653. doi: 10.3390/s23208653.
In the early 1990s, Mehrotra and Nichani developed a filtering-based corner detection method, which, though conceptually intriguing, suffered from limited reliability, leading to minimal references in the literature. Despite its underappreciation, the core concept of this method, rooted in the half-edge concept and directional truncated first derivative of Gaussian, holds significant promise. This article presents a comprehensive assessment of the enhanced corner detection algorithm, combining both qualitative and quantitative evaluations. We thoroughly explore the strengths, limitations, and overall effectiveness of our approach by incorporating visual examples and conducting evaluations. Through experiments conducted on both synthetic and real images, we demonstrate the efficiency and reliability of the proposed algorithm. Collectively, our experimental assessments substantiate that our modifications have transformed the method into one that outperforms established benchmark techniques. Due to its ease of implementation, our improved corner detection process has the potential to become a valuable reference for the computer vision community when dealing with corner detection algorithms. This article thus highlights the quantitative achievements of our refined corner detection algorithm, building upon the groundwork laid by Mehrotra and Nichani, and offers valuable insights for the computer vision community seeking robust corner detection solutions.
20世纪90年代初,梅赫罗特拉和尼查尼开发了一种基于滤波的角点检测方法,该方法虽然在概念上很有趣,但可靠性有限,因此在文献中的引用很少。尽管该方法未得到充分重视,但其核心概念基于半边概念和高斯方向截断一阶导数,具有很大的潜力。本文对改进后的角点检测算法进行了全面评估,结合了定性和定量评估。我们通过纳入视觉示例和进行评估,深入探讨了我们方法的优点、局限性和整体有效性。通过对合成图像和真实图像进行实验,我们证明了所提算法的效率和可靠性。总的来说,我们的实验评估证实,我们的改进已将该方法转变为一种优于既定基准技术的方法。由于其易于实现,我们改进后的角点检测过程在处理角点检测算法时,有可能成为计算机视觉社区的有价值参考。因此,本文突出了我们改进后的角点检测算法的定量成果,以梅赫罗特拉和尼查尼奠定的基础为依托,为寻求强大角点检测解决方案的计算机视觉社区提供了有价值的见解。