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融合视频与激光信息的双向人流计数方法
提出了通过融合视频与激光信息以实现双向人流计数的方法。首先利用激光处理手段对通过指定位置的人数进行统计,然后利用视频跟踪手段确定人通过指定位置后的离开方向,最后根据视频信息与激光信息的匹配关系,计算在两个不同方向上的离开...
钟新玉刘峡壁魏雪曹月
关键词:视频跟踪智能交通视频监控
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Hebbian-based mean shift for learning the diverse shapes of V1 simple cell receptive fields
2014年
The L0-norm constraint in sparse coding has the advantage of producing the same diversity of receptive field shapes as physiology data,but is difficult for analysis.It remains a challenging issue to understand how the diverse shapes of V1 simple cell receptive fields emerge in visual cortex.This paper presents a biologically plausible learning algorithm,named Hebbian-based mean shift,for this problem.The L0-norm constraint optimizes the number of basis functions rather than their coefficients.We report that the optimization procedure is essentially a 0–1 programming of the selection of basis functions.By assuming that the basis functions are independently selected from a basis set,we find the spatial distribution of input samples containing a special basis function has a star shape and peaks at this basis function.Thus,learning the basis functions for sparse coding with the L0-norm can be interpreted as mode detection where the basis functions are the modes of the kernel density estimate.We employ mean shift to detect modes and prove that the updating rule for the mean shift is Hebbian.The simulation results demonstrate the robustness of the proposed algorithm in producing both Gabor-like and blob-like basis functions.
Jiqian LiuYunde Jia
关键词:感受野单细胞
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