| Literature DB >> 18977728 |
Abstract
Learning about the world through our senses constrains our ability to recognise our surroundings. Experience shapes perception. What is the neural basis for object recognition and how are learning-induced changes in recognition manifested in neural populations? We consider first the location of neurons that appear to be critical for object recognition, before describing what is known about their function. Two complementary processes of object recognition are considered: discrimination among diagnostic object features and generalization across non-diagnostic features. Neural plasticity appears to underlie the development of discrimination and generalization for a given set of features, though tracking these changes directly over the course of learning has remained an elusive task.Entities:
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Year: 2009 PMID: 18977728 PMCID: PMC2674481 DOI: 10.1098/rstb.2008.0271
Source DB: PubMed Journal: Philos Trans R Soc Lond B Biol Sci ISSN: 0962-8436 Impact factor: 6.237
Figure 1(a) Schematic of tuning curves for systematically varying face or object stimuli. Each black curve shown below reflects the relative change in firing rate for a given neuron that is elicited by the stimuli depicted above. The neuron leading to the far left curve would be said to ‘prefer’ the profile face view (or cat stimulus), but would also change activity for the adjacent image. (b) Cat and dog morphs taken from Freedman ; face views taken from Eifuku . Selectivity can be increased by raising thresholds, as indicated by the horizontal black line. Here, instead of firing at an intermediate level for the adjacent images, the tuning curves indicate a near or below threshold activity level for all but the preferred stimulus. This decrease in the number of effective stimuli is also referred to in the text as a ‘sparsening’ of the code. (c) Sparsening shown ‘normalised’ to the threshold. The same tuning functions as in (b), but shown with respect to the new threshold. The narrowing of the tuning curve, indicating sparsening, is now clear. (d) Increased sensitivity to the varying stimulus parameter can be accomplished by a combination of the recruitment of neurons and a sparsening (i.e. sharpening) of their tuning functions. (e) Selective sharpening and recruitment restricted to the critical parameters is sometimes seen. For example, sharpening of tuning can be seen around trained orientations. In contrast to increased sensitivity to small differences, categorization effects are often seen as an invariance to small, irrelevant differences, but a preserved sensitivity to the across-category, or relevant, differences. The extreme right and left faces here represent two identities, with intermediate morphs in between, and the prototype morph in the middle (adapted from Leopold ). Discrimination training to various identity morphs leads to responses that increase as the morphs approach the identity of an individual (grey and black thick lines). Thus, the neural code affords some degree of within-category invariance to identity, while maintaining selectivity across identities, even for images near the ‘average’ face. (f) In the human medial temporal lobe, cells respond with a remarkable degree of ‘within-category’ invariance for a specific individual. Whereas some cells will prefer only a subset of images of a given individual (thin black lines), many neurons responded to all examples of the preferred individual (either left three or right three images), despite large differences in perceptual input, and including the visually dissimilar written name of the individual (thick lines). Bottom images modified from Quiroga . (g) A relatively unexplored means by which neurons could code for face or object category is in spike timing. In the locust olfactory system, repeated presentation of scent classes evokes fewer, but better-timed responses. (i)–(iii) Subsequent trials of a given odour. (i) The local field potential (population) response, revealing the emergence of sustained oscillations following odour presentation. (ii) The next trace shows the spiking activity, which becomes aligned to the oscillation upon repeated presentations. (iii) Two simultaneously recorded neurons, revealing how time locking to a common oscillation also results in a synchronization of responses across the population of responsive neurons. Fewer, but better-timed spikes may lead to a more efficient representation of the relevant odour classes. Traces are adapted from Stopfer & Laurent (1999).