Neural network models of the tactile system develop first-order units with spatially complex receptive fields.
Charlie W ZhaoMark J DaleyJ Andrew PruszynskiPublished in: PloS one (2018)
First-order tactile neurons have spatially complex receptive fields. Here we use machine-learning tools to show that such complexity arises for a wide range of training sets and network architectures. Moreover, we demonstrate that this complexity benefits network performance, especially on more difficult tasks and in the presence of noise. Our work suggests that spatially complex receptive fields are normatively good given the biological constraints of the tactile periphery.