%A Felsberg,Michael %A Öfjäll,Kristoffer %A Lenz,Reiner %D 2015 %J Frontiers in Robotics and AI %C %F %G English %K feature descriptors,population codes,channel representations,Decoding,Estimation,visualization,Bias %Q %R 10.3389/frobt.2015.00020 %W %L %M %P %7 %8 2015-August-26 %9 Hypothesis and Theory %+ Michael Felsberg,Computer Vision Laboratory, Department of Electrical Engineering, Linköping University,Sweden,michael.felsberg@liu.se %# %! Unbiased decoding of feature descriptors %* %< %T Unbiased Decoding of Biologically Motivated Visual Feature Descriptors %U https://www.frontiersin.org/articles/10.3389/frobt.2015.00020 %V 2 %0 JOURNAL ARTICLE %@ 2296-9144 %X Visual feature descriptors are essential elements in most computer and robot vision systems. They typically lead to an abstraction of the input data, images, or video, for further processing, such as clustering and machine learning. In clustering applications, the cluster center represents the prototypical descriptor of the cluster and estimates the corresponding signal value, such as color value or dominating flow orientation, by decoding the prototypical descriptor. Machine learning applications determine the relevance of respective descriptors and a visualization of the corresponding decoded information is very useful for the analysis of the learning algorithm. Thus decoding of feature descriptors is a relevant problem, frequently addressed in recent work. Also, the human brain represents sensorimotor information at a suitable abstraction level through varying activation of neuron populations. In previous work, computational models have been derived that agree with findings of neurophysiological experiments on the representation of visual information by decoding the underlying signals. However, the represented variables have a bias toward centers or boundaries of the tuning curves. Despite the fact that feature descriptors in computer vision are motivated from neuroscience, the respective decoding methods have been derived largely independent. From first principles, we derive unbiased decoding schemes for biologically motivated feature descriptors with a minimum amount of redundancy and suitable invariance properties. These descriptors establish a non-parametric density estimation of the underlying stochastic process with a particular algebraic structure. Based on the resulting algebraic constraints, we show formally how the decoding problem is formulated as an unbiased maximum likelihood estimator and we derive a recurrent inverse diffusion scheme to infer the dominating mode of the distribution. These methods are evaluated in experiments, where stationary points and bias from noisy image data are compared to existing methods.