Skip to main content
. 2020 Jul 3;10:10972. doi: 10.1038/s41598-020-67573-7

Figure 3.

Figure 3

Impact of the post-processing framework on classification of images for a given species and a given threshold. Usually, the classification of an image of class i can either be correct, if the model classifies it as i, or wrong, if the classifier classifies it as j with j i (a). We propose a post processing to set a confidence threshold for each class to obtain 3 types of results, correct, misclassified, and unsure (b). The goal is then to transform as many misclassifications as possible as “Unsure”, while preventing to transform too many correct classifications “Unsure”.