实时静态图像中阴影检测和去除方案的设计与分析

Sameer Ali, Muhammad Adeel Karim, Junaid Akhtar, Tanveer Ahmed Khan, Sikander Khan Mandokhail, Ubaid Rehman Shaikh, Naveed Ahmed Buriro, Basit Ali Arain
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引用次数: 0

摘要

这项研究的主要目的是研究和评估如何检测和消除静止图像中不受欢迎的阴影,因为这些阴影可能会掩盖光源和其他障碍物造成的重要信息。研究了多种检测和消除阴影的方法,以及基于运动估计和识别的物体跟踪方法。其中包括背景减影等阴影消除方法,这些方法的目的是改善源项目的障碍物识别,并提高物体阴影消除的准确性。当新物品进入帧时,首先要使用参考帧将它们与背景区分开来。由于阴影与前景物体合并,跟踪过程变得更加困难。该方法通过使用形态学程序识别和去除阴影,突出了由于障碍物频繁出现而导致的物体检测困难。此外,还讨论了使用特征提取的拟议方法,强调其在图像处理研究中的重要性,以及使用建议的方法克服图像序列中的障碍。所提出的阴影识别和去除方法为改进静态图像的图像处理提供了一种新方法。这项技术的目的是更好地检测和去除图像中的阴影,从而提高物体跟踪和检测的精度。根据所处理图像的类型,处理过程从初始化背景模型开始,背景模型基于静态图像背景。
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Design and analysis of shadow detection and removal scheme in real-time still images
This research’s main objective is to study and evaluate the detection and removal of undesired shadows from still images since these shadows might mask important information caused by light sources and other obstructions. A variety of methods for detecting and eliminating shadows as well as object tracking approaches based on movement estimation and identification are investigated. This includes shadow removal methods like background subtraction, which are intended to improve obstacle recognition of the source item and increase the accuracy of shadow removal from objects. When new items enter the frame, they are first distinguished from the background using a reference frame. The tracking procedure is made more difficult by the merging of the shadow with the foreground object. The approach highlights the difficulties in object detection owing to frequent occurrences of obstacles by using morphological procedures for shadow identification and removal. The proposed approach uses feature extraction is also discussed, highlighting its importance in image processing research and the use of suggested methods to get over obstacles in image sequences. The proposed method for shadow identification and removal offers a novel approach to improve image processing when dealing with still images. The purpose of this technique is to better detect and remove shadows from images, which will increase the precision of object tracking and detection. Depending on the type of images being processed, the process begins with initializing a background model, which is based on a static image background.
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