Benchmark模型matlab代码-Notes-1:笔记-1

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Benchmark模型matlab代码 Notes Marks Code Marks Code Marks Code Marks Code Marks Code cite:NIPS2013_5192 Marks Code cite:karpathy15:visual_under_recur_networ Marks Code Deep Tracking Seeing Beyond Seeing Using Recurrent Neural Marks Code Marks Code Tutorial/ Deep Reinforcement Learning Marks Code Marks Code cite:NIPS2013_5192 Marks Code Summary(<2016>) 关于现在做的Tracking的一些问题: 首先是关于将RNN模型放在Benchmark上的问题,由于之前考虑欠佳,如果需要将RNN用在一般的数据集上有一个很大的问题就是没有足够多的样本来做训练,这是一个最大的问题。 论文的数目还是不太够。 没有找到合适的切入点去做。 需要看一下在

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