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Enhanced TLD-based video object-tracking implementation tested on embedded platforms

机译:增强基于TLD的视频对象跟踪实现在嵌入式平台上测试

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摘要

Object-tracking algorithms on embedded platforms are very important in many civilian and military applications. The Tracking-Learning-Detection (TLD) algorithm is considered one of the state-of-the-art online long-term object-tracking algorithms. The performance of running such computationally intensive algorithms on embedded platforms with limited computing resources is a challenge. This work proposes an enhanced TLD implementation, specifically designed for, and tested on, embedded platforms. In this new implementation, an extra-stage has been added to the TLD detector cascade, called a Region filter. This filter dynamically identifies the candidate region for the tracked object. Further, the two independent tracker and detector TLD components, and the two independent Forward-Backward (FB) and Normalized Cross Correlation (NCC) error measures in the tracker have been parallelized. Still further, the computations of Image Integral in the detector and the NCC in both the tracker and the detector have been optimized using a single instruction multiple data (SIMD) architecture. We evaluate our proposed implementation on the Apalis T30 embedded platform, using the same video sequences that the original TLD is evaluated on. Our results show that our enhanced implementation outperforms the baseline with an average speedup of 3.7 x in the total number of frames per second (fps), while achieving an average 91% of the Precision and 86.6% of the Recall metrics, across all sequences. Further, our enhanced implementation achieves an average speedup of 4.52 x and 1.86 x in the detector and tracker execution times, respectively. Moreover, it results in an average 66.3% energy saving, as compared to the original implementation.
机译:嵌入式平台上的对象跟踪算法在许多平民和军事应用中非常重要。跟踪学习检测(TLD)算法被认为是最先进的在线长期对象跟踪算法之一。在具有有限计算资源的嵌入式平台上运行这种计算密集型算法的性能是挑战。这项工作提出了增强的TLD实现,专门为嵌入式平台设计和测试。在这种新实现中,已将额外的级别添加到TLD探测器级联,称为区域过滤器。此筛选器动态标识跟踪对象的候选区域。此外,两个独立的跟踪器和检测器TLD分量,以及跟踪器中的两个独立的前后向后(FB)和标准化的跨相关(NCC)误差测量并行化。此外,使用单个指令多数据(SIMD)架构,已经优化了检测器和检测器中的检测器和检测器中的图像中积分的图像和NCC的计算。我们使用相同的视频序列评估了Apalis T30嵌入式平台上的建议实现,使用了原始TLD的相同视频序列。我们的研究结果表明,我们的增强型实施优于基线,平均加速度为3.7 x的每秒帧数(FPS),同时在所有序列中实现了91%的精度和86.6%的召回度量。此外,我们的增强型实施分别在检测器和跟踪器执行时间内实现了4.52 x和1.86 x的平均速度。此外,与原始实施相比,它会平均为节能66.3%。

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