Identifying 3 moss species by deep learning, using the "chopped picture" method

08/07/2017
by   Takeshi Ise, et al.
0

In general, object identification tends not to work well on ambiguous, amorphous objects such as vegetation. In this study, we developed a simple but effective approach to identify ambiguous objects and applied the method to several moss species. As a result, the model correctly classified test images with accuracy more than 90 vision studies.

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