Unsupervised learning of object semantic parts from internal states of CNNs by population encoding

We address the key question of how object part representations can be found from the internal states of CNNs that are trained for high-level tasks, such as object classification. This work provides a new unsupervised method to learn semantic parts and gives new understanding of the internal representations of CNNs... (read more)

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