The brain is widely viewed as a predictive system. In the context of perception, this view posits that the brain conceives the visual world by comparing sensory inputs to internally generated models of what the world should look like. Despite this emphasis on internal models, their key properties are not well understood. We currently do not know what exactly is contained in our internal models and how these contents vary systematically across individuals. PEP will address these critical knowledge gaps, by (i) developing techniques to quantify the contents of internal models and (ii) using information about these contents to capture individual differences in perception.
Focusing on natural vision, we will use creative drawing methods to characterize the contents of internal models. By analyzing drawings of real-world scenes, we will distill the contents of individual people’s internal models. These insights will form the basis for a comprehensive cognitive, neural, and computational investigation of natural vision on the individual level. The program is structured in four work packages: First, we will establish how individual differences in the contents of internal models explain the efficiency of scene vision, on the behavioral and neural levels (WP1). Second, we will harness variations in people’s drawings to determine the critical features of internal models that guide scene vision (WP2). Third, we will develop computational models capable of predicting scene perception on the individual level from participants’ drawings of scenes (WP3). Finally, we will systematically investigate how individual differences in internal models co-vary with individual differences in visual and linguistic experience, functional brain architecture, and scene exploration (WP4).
PEP will illuminate natural vision from a new angle – starting from a characterization of individual people’s internal models of the world. Through this change of perspective, we can make true progress in understanding what exactly is predicted in the predictive brain, and how differences in people’s predictions relate to differences in their perception of the world.