"/>

国产精品99一区二区三_免费中文日韩_国产在线精品一区二区_日本成人手机在线

U.S. researchers find way for drones to fly in dense environments at high speed

Source: Xinhua    2018-02-12 15:39:03

WASHINGTON, Feb. 12 (Xinhua) -- Engineers from the Massachusetts Institute of Technology (MIT) have developed a mapping system that allows drones to fly 32 km per hour consistently through dense environments like forests and warehouses.

The paper released on Monday showcased a system called NanoMap that uses a depth-sensing system to stitch together a series of measurements about the drone's immediate surroundings.

It allows the drone to not only make motion plans for its current field of view, but also anticipate how it should move around in the hidden fields of view that it has already seen.

"Overly confident maps won't help you if you want drones that can operate at higher speeds in human environments," said Pete Florence, a MIT graduate student and the paper's lead author.

According to Florence, many existing flying approaches rely on intricate maps that aim to tell drones exactly where they are relative to obstacles, but it isn't particularly practical in real-world settings with unpredictable objects.

Now, at high speeds, computer-vision algorithms are unable to make much of their surroundings.

However, NanoMap essentially doesn't sweat the minor details. It operates under the assumption that, to avoid an obstacle, one doesn't have to take all measurements to find its exact location in space.

Instead, the drone can simply gather enough information to know that the object is in a general area.

"An approach that is better aware of uncertainty gets us a much higher level of reliability in terms of being able to fly in close quarters and avoid obstacles," Florence said.

"The key difference to previous work is that the researchers created a map consisting of a set of images with their position uncertainty rather than just a set of images and their positions and orientation," said Sebastian Scherer, from the Carnegie Mellon University's Robotics Institute.

"Keeping track of the uncertainty has the advantage of allowing the use of previous images even if the robot doesn't know exactly where it is and allows in improved planning," Scherer said.

NanoMap is particularly effective for smaller drones moving through smaller spaces, and works well in tandem with a second system that is focused on more long-horizon planning.

"The researchers demonstrated impressive results avoiding obstacles and this work enables robots to quickly check for collisions," said Scherer.

Editor: Lifang
Related News
Xinhuanet

U.S. researchers find way for drones to fly in dense environments at high speed

Source: Xinhua 2018-02-12 15:39:03

WASHINGTON, Feb. 12 (Xinhua) -- Engineers from the Massachusetts Institute of Technology (MIT) have developed a mapping system that allows drones to fly 32 km per hour consistently through dense environments like forests and warehouses.

The paper released on Monday showcased a system called NanoMap that uses a depth-sensing system to stitch together a series of measurements about the drone's immediate surroundings.

It allows the drone to not only make motion plans for its current field of view, but also anticipate how it should move around in the hidden fields of view that it has already seen.

"Overly confident maps won't help you if you want drones that can operate at higher speeds in human environments," said Pete Florence, a MIT graduate student and the paper's lead author.

According to Florence, many existing flying approaches rely on intricate maps that aim to tell drones exactly where they are relative to obstacles, but it isn't particularly practical in real-world settings with unpredictable objects.

Now, at high speeds, computer-vision algorithms are unable to make much of their surroundings.

However, NanoMap essentially doesn't sweat the minor details. It operates under the assumption that, to avoid an obstacle, one doesn't have to take all measurements to find its exact location in space.

Instead, the drone can simply gather enough information to know that the object is in a general area.

"An approach that is better aware of uncertainty gets us a much higher level of reliability in terms of being able to fly in close quarters and avoid obstacles," Florence said.

"The key difference to previous work is that the researchers created a map consisting of a set of images with their position uncertainty rather than just a set of images and their positions and orientation," said Sebastian Scherer, from the Carnegie Mellon University's Robotics Institute.

"Keeping track of the uncertainty has the advantage of allowing the use of previous images even if the robot doesn't know exactly where it is and allows in improved planning," Scherer said.

NanoMap is particularly effective for smaller drones moving through smaller spaces, and works well in tandem with a second system that is focused on more long-horizon planning.

"The researchers demonstrated impressive results avoiding obstacles and this work enables robots to quickly check for collisions," said Scherer.

[Editor: huaxia]
010020070750000000000000011100001369697511
主站蜘蛛池模板: 城固县| 新疆| 阳泉市| 延川县| 千阳县| 彰化市| 沙雅县| 工布江达县| 南通市| 健康| 上思县| 玉山县| 马边| 南昌县| 安宁市| 抚松县| 南澳县| 论坛| 九龙城区| 福鼎市| 静宁县| 灵寿县| 沁水县| 广饶县| 普格县| 金昌市| 祥云县| 庆阳市| 平度市| 台州市| 辽阳市| 昭苏县| 荔波县| 蓝田县| 徐州市| 历史| 闵行区| 叶城县| 乐陵市| 长阳| 牙克石市|