Abstract
Recent investigations (Poggio and Girosi 1990b) have pointed out the equivalence between a wide class of learning problems and the reconstruction of a real-valued function from a sparse set of data. However, in order to process sensory information and to generate purposeful actions living organisms must deal not only with real-valued functions but also with vector-valued mappings. Examples of such vector-valued mappings range from the optical flow fields associated with visual motion to the fields of mechanical forces produced by neuromuscular activation. In this paper, I discuss the issue of vector-field processing from a broad computational perspective. A variety of vector patterns can be efficiently represented by a combination of linearly independent vector fields that I call “basis fields”. Basis fields offer in some cases a better alternative to treating each component of a vector as an independent scalar entity. In spite of its apparent simplicity, such a component-based representation is bound to change with any change of coordinates. In contrast, vector-valued primitives such as basis fields generate vector field representations that are invariant under coordinate transformations.
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References
Andersen RA, Snowden RJ, Treue S, Graziano M (1990) Hierarchical processing of motion in the visual cortex of monkey. Cold Spring Harbor Symp Quant Biol The Brain 55:741–748
Bizzi E, Mussa-Ivaldi FA, Giszter SF (1991) Computations underlying the execution of movement: A biological perspective. Science 253:287–291
Flash T, Hogan N (1985) The coordination of arm movements: An experimentally confirmed mathematical model. J Neurosci 5:1688–1703
Gibson JJ (1950) The perception of the visual world. Houghton-Mifflin, Boston
Girosi F, Poggio T (1990) Networks and the best approximation property. Biol Cybern 63:169–176
Hogan N (1985) The mechanics of multi-joint posture and movement control. Biol Cybern 52:315–331
Hopfield JJ (1982) Neural networks and physical systems with emergent collective computational abilities. Proc Nat Acad Sci USA 79:2554–2558
Horn BKP (1986) Robot vision. MIT Press, Cambridge
Kellogg OD (1953) Foundations of potential theory. Dover, New York
Levi-Civita T (1977) The absolute differential calculus. (Calculus of tensors). Dover, New York (First English Edition, Blackie and Son, Glasgow 1926)
Micchelli CA (1986) Interpolation of scattered data: Distance matrices and conditionally positive definite functions. Constructive Approx 2:11–22
Mussa-Ivaldi FA, Giszter SF (1992) Vector field approximation: A computational paradigm for motor control and learning. Biol Cybern 67:491–500
Mussa-Ivaldi F, Hogan N, Bizzi E (1985) Neural, mechanical and geometrical factors subserving arm posture in humans. J Neurosci 5:2732–2743
Poggio T (1990) A theory of how the brain might work. Cold Spring Harbor Symp Quant Biol The Brain 55:899–910
Poggio T, Girosi F (1990a) Networks for approximation and learning. Proc. IEEE 78:1481–1497
Poggio T, Girosi F (1990b) A theory of networks for learning. Science 247:978–982
Poggio T, Torre V, Koch C (1985) Computational vision and regularization theory. Nature 317:314–319
Powell MJD (1987) Radial basis functions for multivariable interpolation: a review. In: Mason JC, Cox MG (eds) Algorithms for approximation. Clarendon Press, Oxford
Rice JR (1964) The approximation of functions. Addison-Wesley, Reading
Rumelhard DE, McLelland JL, the PDP Research Group (1986) Parallel distributed processing. Explorations in the microstructure of cognition, MIT Press, Cambridge
Saito H, Yukio M, Tanaka K, Hikosaka K, Fukada Y, Iwai E (1986) Integration of direction signals of image motion in the superior temporal sulcus of the macaque monkey. J Neurosci 6:145–157
Shadmehr R, Muss-Ivaldi FA, Bizzi E (1992) Postural force fields of the human arm and their role in generating multi-joint movements. J Neurosci (in press)
Spivak M (1965) Calculus on manifolds. Benjamin/Cummings Publishing Co., Menlo Park
Tanaka K, Fukada Y, Saito H (1989) Underlying mechanisms of the reponse specificity of the expansion/contraction and rotation cells in the dorsal part of the medial superior temporal area of the macaque monkey. J Neurophysiol 62:642–656
Tikhonov AN, Arsenin VY (1977) Solutions of ill-posed problems. W. H. Winston, Washington
Wahba G (1982) Vector splines on the sphere, with application to the estimation of vorticity and divergence from discrete noisy data. In: Schempp W, Zeller K (eds) Multivariate approximation theory, Birkhauser Verlag, Basel Boston Stuttgart, pp 407–429
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Mussa-Ivaldi, F.A. From basis functions to basis fields: vector field approximation from sparse data. Biol. Cybern. 67, 479–489 (1992). https://doi.org/10.1007/BF00198755
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DOI: https://doi.org/10.1007/BF00198755