The concept of affordance is important to understand the relevance of object
parts for a certain functional interaction. Affordance types generalize across
object categories and are not mutually exclusive. This makes the segmentation
of affordance regions of objects in images a difficult task. In this work, we
build on an iterative approach that learns a convolutional neural network for
affordance segmentation from sparse keypoints. During this process, the
predictions of the network need to be binarized. In this work, we propose an
adaptive approach for binarization and estimate the parameters for
initialization by approximated cross validation. We evaluate our approach on
two affordance datasets where our approach outperforms the state-of-the-art for
weakly supervised affordance segmentation