Object Tracking Based on Optical Flow Reconstruction of Motion-Group Parameters

Information Pub Date : 2024-05-22 DOI:10.3390/info15060296
Simeon Karpuzov, George H. Petkov, Sylvia Ilieva, Alexander Petkov, S. Kalitzin
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Abstract

Rationale. Object tracking has significance in many applications ranging from control of unmanned vehicles to autonomous monitoring of specific situations and events, especially when providing safety for patients with certain adverse conditions such as epileptic seizures. Conventional tracking methods face many challenges, such as the need for dedicated attached devices or tags, influence by high image noise, complex object movements, and intensive computational requirements. We have developed earlier computationally efficient algorithms for global optical flow reconstruction of group velocities that provide means for convulsive seizure detection and have potential applications in fall and apnea detection. Here, we address the challenge of using the same calculated group velocities for object tracking in parallel. Methods. We propose a novel optical flow-based method for object tracking. It utilizes real-time image sequences from the camera and directly reconstructs global motion-group parameters of the content. These parameters can steer a rectangular region of interest surrounding the moving object to follow the target. The method successfully applies to multi-spectral data, further improving its effectiveness. Besides serving as a modular extension to clinical alerting applications, the novel technique, compared with other available approaches, may provide real-time computational advantages as well as improved stability to noisy inputs. Results. Experimental results on simulated tests and complex real-world data demonstrate the method’s capabilities. The proposed optical flow reconstruction can provide accurate, robust, and faster results compared to current state-of-the-art approaches.
基于运动组参数光流重构的物体跟踪
理由物体跟踪在许多应用中都具有重要意义,从无人驾驶车辆的控制到特定情况和事件的自主监控,尤其是在为癫痫发作等某些不良状况的患者提供安全保障时。传统的跟踪方法面临许多挑战,如需要专用的附加设备或标签、受高图像噪声的影响、复杂的物体运动以及密集的计算要求。我们较早开发了计算效率高的全局光流重建群速度算法,为惊厥发作检测提供了手段,并有可能应用于跌倒和呼吸暂停检测。在此,我们要解决的难题是如何将计算出的相同群速度用于并行物体追踪。方法。我们提出了一种基于光流的物体追踪新方法。它利用摄像头的实时图像序列,直接重建内容的全局运动群参数。这些参数可以引导运动物体周围的矩形感兴趣区域跟踪目标。该方法成功地应用于多光谱数据,进一步提高了其有效性。除了作为临床警报应用的模块扩展外,与其他可用方法相比,这种新技术还能提供实时计算优势,并提高对噪声输入的稳定性。实验结果模拟测试和复杂真实世界数据的实验结果证明了该方法的能力。与目前最先进的方法相比,所提出的光流重构技术能提供准确、稳健和快速的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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