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Visual Tracking Based on Convolutional Deep Belief Network

机译:基于卷积的深度信仰网络的视觉跟踪

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摘要

Visual tracking is an important task within the field of computer vision. Recently, deep neural networks have gained significant attention thanks to their success on learning image features. But the existing deep neural networks applied in visual tracking are full-connected complicated architectures with large amount of redundant parameters that would be low efficiently to learn. We tackle this problem by using a novel convolutional deep belief network (CDBN) with convolution, weights sharing and pooling to have much fewer parameters to learn, in addition to gain translation invariance which would benefit the tracker performance. Theoretical analysis and experimental evaluations on an open tracker benchmark demonstrate our CDBN based tracker is more accurate by improving tracking success rate 22.6% and tracking precision 62.8% on average, while maintaining low computation cost by reduces the number of parameters to 44.4%, compared to DLT, another well-known deep learning tracker. Meanwhile, our tracker can achieve real-time performance by a graphics processing unit (GPU) speedup of 2.61 times on average and up to 3.08 times.
机译:视觉跟踪是计算机愿景领域的重要任务。最近,由于他们在学习图像特征上的成功,深度神经网络效果显着。但是,应用在视觉跟踪中的现有深度神经网络是具有大量冗余参数的全连接复杂的架构,从而有效地学习。我们通过使用卷积的小说卷积的深度信仰网络(CDBN)来解决这个问题,权重共享和汇集来学习更少的参数,除了收益转换不变性,这将使跟踪器性能有益。开放式跟踪基准测试的理论分析和实验评估展示了我们的CDBN基于CDBN的跟踪器,通过提高跟踪成功率为22.6%并平均跟踪精度62.8%,同时保持低计算成本,将参数减少到44.4% DLT,另一个着名的深层学习追踪器。同时,我们的跟踪器可以通过平均值的图形处理单元(GPU)加速度达到2.61倍,高达3.08倍的实时性能。

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