A role for recurrent processing in object completion: neurophysiological, psychophysical and computational evidence.

Recognition of objects from partial information presents a significant challenge for theories of vision because it requires spatial integration and extrapolation from prior knowledge. We combined neurophysiological recordings in human cortex with psychophysical measurements and computational modelin...

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Những tác giả chính: Tang, Hanlin, Buia, Calin, Madsen, Joseph R., Anderson, William S., Kreiman, Gabriel
Định dạng: Technical Report
Ngôn ngữ:en_US
Được phát hành: Center for Brains, Minds and Machines (CBMM), arXiv 2015
Những chủ đề:
Truy cập trực tuyến:http://hdl.handle.net/1721.1/100173
Miêu tả
Tóm tắt:Recognition of objects from partial information presents a significant challenge for theories of vision because it requires spatial integration and extrapolation from prior knowledge. We combined neurophysiological recordings in human cortex with psychophysical measurements and computational modeling to investigate the mechanisms involved in object completion. We recorded intracranial field potentials from 1,699 electrodes in 18 epilepsy patients to measure the timing and selectivity of responses along human visual cortex to whole and partial objects. Responses along the ventral visual stream remained selective despite showing only 9>25 of the object. However, these visually selective signals emerged ~100 ms later for partial versus whole objects. The processing delays were particularly pronounced in higher visual areas within the ventral stream, suggesting the involvement of additional recurrent processing. In separate psychophysics experiments, disrupting this recurrent computation with a backward mask at ~75ms significantly impaired recognition of partial, but not whole, objects. Additionally, computational modeling shows that the performance of a purely bottom>up architecture is impaired by heavy occlusion and that this effect can be partially rescued via the incorporation of top>down connections. These results provide spatiotemporal constraints on theories of object recognition that involve recurrent processing to recognize objects from partial information.