Anchor objects drive realism while diagnostic objects drive categorization in GAN generated scenes
Aylin Kallmayer,
Melissa L.-H. Võ
Abstract:Our visual surroundings are highly complex. Despite this, we understand and navigate them effortlessly. This requires transforming incoming sensory information into representations that not only span low- to high-level visual features (e.g., edges, object parts, objects), but likely also reflect co-occurrence statistics of objects in real-world scenes. Here, so-called anchor objects are defined as being highly predictive of the location and identity of frequently co-occuring (usually smaller) objects, derived … Show more
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