Department of Electronics and Communication Engineering, MLR Institute of Technology, Hyderabad, Telangana, India.
Department of Computer Science and Engineering, MLR Institute of Technology, Hyderabad, Telangana, India.
PLoS One. 2023 Aug 11;18(8):e0289823. doi: 10.1371/journal.pone.0289823. eCollection 2023.
Current methods of edge identification were constrained by issues like lighting changes, position disparity, colour changes, and gesture variability, among others. The aforementioned modifications have a significant impact, especially on scaled factors like temporal delay, gradient data, effectiveness in noise, translation, and qualifying edge outlines. It is obvious that an image's borders hold the majority of the shape data. Reducing the amount of time it takes for image identification, increase gradient knowledge of the image, improving efficiency in high noise environments, and pinpointing the precise location of an image are some potential obstacles in recognizing edges. the boundaries of an image stronger and more apparent locate those borders in the image initially, sharpening it by removing any extraneous detail with the use of the proper filters, followed by enhancing the edge-containing areas. The processes involved in recognizing edges are filtering, boosting, recognizing, and localizing. Numerous approaches have been suggested for the previously outlined identification of edges procedures. Edge detection using Fast pixel-based matching and contours mappingmethods are used to overcome the aforementioned restrictions for better picture recognition. In this article, we are introducing the Fast Pixel based matching and contours mapping algorithms to compare the edges in reference and targeted frames using mask-propagation and non-local techniques. Our system resists significant item visual fluctuation as well as copes with obstructions because we incorporate input from both the first and prior frames Improvement in performance in proposed system is discussed in result section, evidences are tabulated and sketched. Mainly detection probabilities and detection time is remarkably reinforced Effective identification of such things were widely useful in fingerprint comparison, medical diagnostics, Smart Cities, production, Cyber Physical Systems, incorporating Artificial Intelligence, and license plate recognition are conceivable applications of this suggested work.
当前的边缘识别方法受到光照变化、位置差异、颜色变化和手势变化等因素的限制。上述修改对时间延迟、梯度数据、噪声中的有效性、平移和边缘轮廓的定性等比例因素有重大影响。显然,图像的边界包含了大部分的形状数据。减少图像识别所需的时间,增加图像的梯度知识,提高高噪声环境下的效率,并准确定位图像的位置,这些都是识别边缘的一些潜在障碍。图像的边界更强、更明显,首先定位图像中的那些边界,通过使用适当的滤波器去除任何多余的细节来锐化它,然后增强包含边缘的区域。识别边缘的过程涉及滤波、增强、识别和定位。已经提出了许多方法来解决前面概述的边缘识别过程。使用快速基于像素的匹配和轮廓映射方法进行边缘检测,以克服上述限制,从而实现更好的图像识别。在本文中,我们引入了快速基于像素的匹配和轮廓映射算法,使用掩模传播和非局部技术来比较参考帧和目标帧中的边缘。我们的系统抵抗了重要物品的视觉波动,并且能够应对障碍物,因为我们结合了第一帧和前一帧的输入。在结果部分讨论了所提出系统的性能改进,列出并绘制了证据。主要检测概率和检测时间得到了显著增强。这种方法在指纹比较、医疗诊断、智慧城市、生产、网络物理系统、人工智能和车牌识别等方面都有广泛的应用。