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Design and FPGA Implementation of an Adaptive video Subsampling Algorithm for Energy-Efficient Single Object Tracking

机译:节能型单目标跟踪的自适应视频子采样算法的设计和FPGA实现

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Image sensors with programmable region-of-interest (ROI) readout are a new sensing technology important for energyefficient embedded computer vision. In particular, ROIs can subsample the number of pixels being readout while performing single object tracking in a video. In this paper, we develop adaptive sampling algorithms which perform joint object tracking and predictive video subsampling. We utilize an object detection consisting of either mean shift tracking or a neural network, coupled with a Kalman filter for prediction. We show that our algorithms achieve mean average precision of 0.70 or higher on a dataset of 20 videos in software. Further, we implement hardware acceleration of mean shift tracking with Kalman filter adaptive subsampling on an FPGA. Hardware results show a 23 × improvement in clock cycles and latency as compared to baseline methods and achieves 38FPS real-time performance. This research points to a new domain of hardware-software co-design for adaptive video subsampling in embedded computer vision.
机译:具有可编程关注区域(ROI)读数的图像传感器是一种新的传感技术,对于节能的嵌入式计算机视觉至关重要。特别是,ROI在执行视频中的单个对象跟踪时可以对要读取的像素数进行二次采样。在本文中,我们开发了自适应采样算法,该算法执行联合对象跟踪和预测视频子采样。我们利用由均值漂移跟踪或神经网络组成的目标检测,并结合卡尔曼滤波器进行预测。我们证明了我们的算法在软件中包含20个视频的数据集上实现的平均平均精度为0.70或更高。此外,我们在FPGA上利用Kalman滤波器自适应子采样实现了均值漂移跟踪的硬件加速。硬件结果显示,与基线方法相比,时钟周期和延迟提高了23倍,并实现了38FPS的实时性能。这项研究指出了嵌入式计算机视觉中自适应视频子采样的软硬件协同设计的新领域。

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