Abstract
image space. The method was used to visualise the hidden feature layers of unsupervised deep ar-chitectures, such as the Deep Belief Network (DBN) [7], and it was later employed by Le et al.[9] to visualise the class models, captured by a deep unsupervised auto-encoder. Recently, the problem of ConvNet visualisation was addressed by Zeiler et ...
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