Discriminating image representations with principal distortions
This work addresses the need for more nuanced comparison of complex models in computer vision and neuroscience, though it is incremental as it builds on existing statistical tools.
The authors tackled the problem of comparing image representations by focusing on local geometry differences, using Fisher information to quantify sensitivity to distortions and identifying principal distortions that maximize model variance. They demonstrated the framework on simple visual system models and deep neural networks, revealing differences due to architecture and training.
Image representations (artificial or biological) are often compared in terms of their global geometric structure; however, representations with similar global structure can have strikingly different local geometries. Here, we propose a framework for comparing a set of image representations in terms of their local geometries. We quantify the local geometry of a representation using the Fisher information matrix, a standard statistical tool for characterizing the sensitivity to local stimulus distortions, and use this as a substrate for a metric on the local geometry in the vicinity of a base image. This metric may then be used to optimally differentiate a set of models, by finding a pair of "principal distortions" that maximize the variance of the models under this metric. As an example, we use this framework to compare a set of simple models of the early visual system, identifying a novel set of image distortions that allow immediate comparison of the models by visual inspection. In a second example, we apply our method to a set of deep neural network models and reveal differences in the local geometry that arise due to architecture and training types. These examples demonstrate how our framework can be used to probe for informative differences in local sensitivities between complex models, and suggest how it could be used to compare model representations with human perception.