使用粒子聚类的视觉目标跟踪

Harindra Wisnu Pradhana
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引用次数: 0

摘要

在许多应用中,计算机视觉被用于相对于观察者估计物体的位置。高清晰度传感器通常用于获得精确的目标跟踪,这导致了高处理复杂度。较低分辨率的传感器简化了过程,但显著降低了精度。粒子聚类方法通过对若干具有一定相似性的检测数据进行分组来估计目标位置。本文采用聚类方法对具有一定相似性的像素点进行分组并测量其元素,而不是对视觉数据进行边角检测。聚类测量高度和宽度来估计物体到观察者的距离。本研究引入了新的颜色特征,即使在低分辨率传感器下,也有望实现更好的检测方法。该方法成功地提供了30fps的图像分析,并显著改善了颜色提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual object tracking using particle clustering
Computer vision been used to estimate object location relatively from observer on many applications. High definition sensor often used to gain accuracy of the object tracking which resulting high processing complexity. Lower resolution sensor simplifies the process with significant accuracy lost. Particle clustering method estimates the object location by grouping several detection data with certain similarity. Instead of detecting edges and corner on the visual data, this paper uses clustering method to group pixels with certain similarity and measure its element. The cluster measured both height and width to estimate the distance of the object from the observer. New color features introduced in this research promising a better detection approach even with low resolution sensor. The proposed approach successfully provides 30fps image analysis with significant color extraction improvement.
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