nadel
People are obsessed with this weird pizza box. The company behind it won't discuss it
When Sookie Orth sat down to write her college essay last fall, something quickly came to mind. Orth, then a senior at Sequoyah School in Pasadena, began her draft with a declaration: "I learned how to fold a pizza box at the age of nine." She told the story of her years-long connection with Pizza of Venice in Altadena, where she often dined with her family as a little kid. One day, the manager invited her to assemble a box. Impressed with Orth's speed, the woman told her she could work at the pizzeria when she was older.
- North America > United States > California (0.51)
- North America > United States > Rocky Mountains (0.05)
- North America > United States > New York (0.05)
- North America > Canada > Rocky Mountains (0.05)
For Kids, Learning Is Moving - Issue 40: Learning
When Jon was born prematurely at 26 weeks, he weighed around two pounds and had trouble breathing on his own. For two months he lived in an incubator and eventually grew into a healthy baby and toddler. At age four, he had two epileptic seizures. About a year later his parents began to notice that Jon couldn't remember things that happened in his daily life. He didn't recall watching TV or what happened at school or what book he read. Jon's IQ was normal, he could read and write, and did well at school.
- North America > United States > New York (0.05)
- North America > United States > Arizona (0.04)
- Europe > United Kingdom > England (0.04)
Neural Analog Diffusion-Enhancement Layer and Spatio-Temporal Grouping in Early Vision
Waxman, Allen M., Seibert, Michael, Cunningham, Robert K., Wu, Jian
A new class of neural network aimed at early visual processing is described; we call it a Neural Analog Diffusion-Enhancement Layer or "NADEL." The network consists of two levels which are coupled through feedfoward and shunted feedback connections. The lower level is a two-dimensional diffusion map which accepts visual features as input, and spreads activity over larger scales as a function of time. The upper layer is periodically fed the activity from the diffusion layer and locates local maxima in it (an extreme form of contrast enhancement) using a network of local comparators. These local maxima are fed back to the diffusion layer using an on-center/off-surround shunting anatomy. The maxima are also available as output of the network. The network dynamics serves to cluster features on multiple scales as a function of time, and can be used in a variety of early visual processing tasks such as: extraction of comers and high curvature points along edge contours, line end detection, gap filling in contours, generation of fixation points, perceptual grouping on multiple scales, correspondence and path impletion in long-range apparent motion, and building 2-D shape representations that are invariant to location, orientation, scale, and small deformation on the visual field.
- North America > United States > New York (0.05)
- North America > United States > Michigan > Washtenaw County > Ann Arbor (0.04)
- North America > United States > Massachusetts > Suffolk County > Boston (0.04)
- (4 more...)
Neural Analog Diffusion-Enhancement Layer and Spatio-Temporal Grouping in Early Vision
Waxman, Allen M., Seibert, Michael, Cunningham, Robert K., Wu, Jian
A new class of neural network aimed at early visual processing is described; we call it a Neural Analog Diffusion-Enhancement Layer or "NADEL." The network consists of two levels which are coupled through feedfoward and shunted feedback connections. The lower level is a two-dimensional diffusion map which accepts visual features as input, and spreads activity over larger scales as a function of time. The upper layer is periodically fed the activity from the diffusion layer and locates local maxima in it (an extreme form of contrast enhancement) using a network of local comparators. These local maxima are fed back to the diffusion layer using an on-center/off-surround shunting anatomy. The maxima are also available as output of the network. The network dynamics serves to cluster features on multiple scales as a function of time, and can be used in a variety of early visual processing tasks such as: extraction of comers and high curvature points along edge contours, line end detection, gap filling in contours, generation of fixation points, perceptual grouping on multiple scales, correspondence and path impletion in long-range apparent motion, and building 2-D shape representations that are invariant to location, orientation, scale, and small deformation on the visual field.
- North America > United States > New York (0.05)
- North America > United States > Michigan > Washtenaw County > Ann Arbor (0.04)
- North America > United States > Massachusetts > Suffolk County > Boston (0.04)
- (4 more...)
Neural Analog Diffusion-Enhancement Layer and Spatio-Temporal Grouping in Early Vision
Waxman, Allen M., Seibert, Michael, Cunningham, Robert K., Wu, Jian
A new class of neural network aimed at early visual processing is described; we call it a Neural Analog Diffusion-Enhancement Layer or "NADEL." The network consists of two levels which are coupled through feedfoward and shunted feedback connections. The lower level is a two-dimensional diffusion map which accepts visual features as input, and spreads activity over larger scales as a function of time. The upper layer is periodically fed the activity from the diffusion layer and locates local maxima in it (an extreme form of contrast enhancement) using a network of local comparators. These local maxima are fed back to the diffusion layer using an on-center/off-surround shunting anatomy. The maxima are also available as output of the network. The network dynamics serves to cluster features on multiple scales as a function of time, and can be used in a variety of early visual processing tasks such as: extraction of comers and high curvature points along edge contours, line end detection, gap filling in contours, generation of fixation points, perceptual grouping on multiple scales, correspondence and path impletion in long-range apparent motion, and building 2-D shape representations that are invariant to location, orientation, scale, and small deformation on the visual field.
- North America > United States > New York (0.05)
- North America > United States > Michigan > Washtenaw County > Ann Arbor (0.04)
- North America > United States > Massachusetts > Suffolk County > Boston (0.04)
- (4 more...)