Els robots de la UJI van demostrar la seua marxa. Els Robonova feren combats de sumo, pujaren i baixaren escales.
El Nao, tot i els problemes de comunicació (queda lleig, el cable Ethernet del cap) es va exhibir ballant i caminant.
Els robots de la UJI van demostrar la seua marxa. Els Robonova feren combats de sumo, pujaren i baixaren escales.
El Nao, tot i els problemes de comunicació (queda lleig, el cable Ethernet del cap) es va exhibir ballant i caminant.
The Stanford Racing Team may have placed second at the DARPA Urban Challenge back in 2007, but they haven’t stopped pushing the limits of autonomous cars. At ICRA last week, Zico Kolter and his collaborators showed video of one of the most extreme stunts a robotic car has ever pulled off.
They taught the car to accelerate in reverse up to 25 miles per hour, then suddenly hit the brakes, turn the wheel, and start a 180-degree skid–ending up right in a desired parking spot. It’s not just a cool stunt–this research should give autonomous cars greater flexibility to deal with unexpected situations.
Reliably executing such a stunt isn’t easy. “Junior” (as the car is known) usually operates under closed-loop control, where real-time sensor data is used to continually adjust the controls. This works well for driving the car in a straight line, where the physics of the car’s motion are pretty straightforward to model. Unfortunately, the dynamics model tends to break down as the car enters the complex sliding turn. In the first clip of the video below, you can see Junior miss the mark under this type of control.
As an alternate approach, the team “taught” Junior the stunt through a basic demonstration. The researchers found that even though the sliding is complex to model, it’s a highly deterministic motion–by just blindly repeating the control inputs from the demonstration, the car usually ended up in the same place. But as you can see in the second attempt in the video, this open-loop control method also has a weakness: errors in the straight approach go uncorrected and cause big differences in Junior’s final position.
So to get the best result, the team combined approaches: keeping the car under closed-loop control during the well-modeled approach section, and then letting it transition to open-loop control for the final slide.
Most impressively, the Stanford team allowed the car to determine for itself which approach was better and when to smoothly switch between the two. The result (the third attempt in the video) lands the car right on target. For testing purposes the team decided to use cones rather than actual cars. Just in case.
Vía IEEE Spectrum
Yes, it’s true. LittleDog, which is being developed at USC as part of Darpa’s robot locomotion initiative, will now chase you across rocky terrain, over crevices, and up stairs of various heights. Any weaknesses we might’ve perceived in the initial videos of LittleDog have vanished and with them our hopes of ever resisting the RoboDog takeover.
This newest version of LittleDog is even programmed to teach itself to be more efficient (read: deadly), possessing the ability to evaluate the difference between a good foothold and a bad one and adjusting its steps accordingly.
Vía gizmodo
La feria alemana ISPO ha sido el escenario en el que la mano biónica BeBionic se ha transformado de un concepto a un producto real. Y el resultado no puede ser más espectacular.
Lo más innovador de la mano BeBionic, más allá del diseño y la posibilidad de colocar hasta 19 tipos de pieles, lo encontramos en sus posibilidades de configuración … a distancia. Sí, esta mano se puede configurar de forma inalámbrica, indicándole la velocidad de actuación, la fuerza o la manera en que debe agarrar un objeto.
Esa configuración inalámbrica ha sido pensada para que el responsable médico de la mano pueda, desde la clínica, adecuar el uso y funcionamiento de la mano Bebionic al usuario sin que ninguno de los dos se tenga que desplazar en ningún momento. En esta ocasión nos alegramos mucho de poder decir que BeBionic es realidad y estará disponible desde el próximo mes de junio.
El proper dimecres 26 de maig, a les 12:00, al hall de l’ESTCE se celebrarà la competició de robots per a extinció d’incendis.
En esta competició, els estudiants de l’assignatura d’Intel·ligència Artificial, d’Enginyeria Informàtica, programaran el seu robot per a trobar i apagar un incendi en el menor temps possible.
Divendres passat es va celebrar a la Ciutat de les Ciències la segona edició del concurs “Desafío Robot”, on els estudiants de secundària van lluir els seus robots a les competicions.
Per la nostra part, vam fer les demostracions dels robots humanoides, els veterans Robonova amb els combats de sumo, i pujant i baixant escales, i el nou Nao.
Tot plegat, un èxit d’ambient, interès, i participació.
La XVII edición de Divertilandia la Feria de Ocio Infantil y Juvenil, ofrece un programa de actividades que pretende satisfacer las necesidades de ocio y tiempo libre de los/las más jóvenes de la ciudad durante el período vacacional de la Navidad, y convierte el recinto municipal de la Pérgola en un espacio de entretenimiento y juego familiar repleto de actividades (manualidades, deportes, talleres, teatro, juegos, divercabalgata, diverbus, etc.
The future is not written yet and who knows weather robots are dangerous or not. What is for sure is that humans, being the curious beings, will develop new advanced generations of robots.
Read the full new (english link)
An Italian team is developing a robot trash. It’s called DustBot, measuring one and a half meters, weighs 70 pounds, can carry up to 40 and its battery gives a range of 16 kilometers.The robot works with a combination of a GPS navigation system and a gyroscope. In addition, analyzes the pollution of air and can sweep the trash from the ground.
Visit the official website for further information.