人人草人人-欧美一区二区三区精品-中文字幕91-日韩精品影视-黄色高清网站-国产这里只有精品-玖玖在线资源-bl无遮挡高h动漫-欧美一区2区-亚洲日本成人-杨幂一区二区国产精品-久久伊人婷婷-日本不卡一-日本成人a-一卡二卡在线视频

Feature: Aussie scientists' global challenge to deter "overconfident" robots

Source: Xinhua| 2019-10-25 19:55:31|Editor: Li Xia
Video PlayerClose

SYDNEY, Oct. 25 (Xinhua) -- We could soon live in a world where domestic service robots perform household chores and clean up for us as we go about our daily lives. But what if your new mechanical helper decides to put your laptop in the dishwasher, places your cat in the bathtub and throws your treasured possessions into the trash?

Current vision systems being tested on "simulated" domestic robots in the cluttered, unpredictable environments of the real world, are suffering severely from what experts refer to as overconfidence -- meaning robots are unable to know when they don't know exactly what an object is.

When introduced into our day to day lives, this overconfidence poses a huge risk to people's safety and belongings, and represents a barrier for the development of autonomous robotics.

"These (models) are often trained on a specific data set, so you show it a lot of examples of different objects. But in the real world, you often encounter situations that are not part of that training data set," Niko Sünderhauf explained to Xinhua. He works as a chief investigator with the Australian Center for Robotic Vision (ACRV), headquartered at Queensland University of Technology.

"So, if you train these systems to detect 100 different objects, and then it sees one that it has not seen before, it will just overconfidently think it is one of the object types it knows, and then do something with that, and that can be damaging to the object or very unsafe."

Earlier this year, in an effort to curb these potentially cocky machines, Sünderhauf's team at the ACRV launched a world-first competition, the Robotic Vision Challenge, inviting teams from around the world to find a way to make robots less sure of themselves, and safer for the rest of us.

Sünderhauf hopes that by crowdsourcing the problem and tapping into researchers' natural competitiveness, they can overcome this monumental stumbling block of modern robotics.

The open-ended challenge has already captured global attention due to its implications regarding one of the most excitement inducing and ear-tingling concepts in robotics today -- deep learning.

While it dates back to the 1980s, deep learning "boomed" in 2012 and was hailed as a revolution in artificial intelligence, enabling robots to solve all kinds of complex problems without assistance, and behaving more like humans in the way they see, listen and think.

When applied to tasks like photo-captioning, online ad targeting, or even medical diagnosis, deep learning has proved incredibly efficient, and many organizations reliably employ these methods, with the cost of mistakes being relatively low.

However, when you introduce these intelligence systems into a physical machine which will interact with people and animals in the real world -- the stakes are decidedly higher.

"As soon as you put these systems on robots that work in the real world the consequences can be severe, so it's really important to get this part right and have this inbuilt uncertainty and caution in the system," Sünderhauf said.

To solve these issues would undoubtedly play a part in taking robotics to the next level, not just in delivering us our autonomous housekeepers, but in a range of other applications from autonomous cars and drones to smart sidewalks and robotic shop attendants.

"I think this is why this push is coming out of the robotic vision lab at the moment from our side, because we understand it's important and we understand that deep learning can do a lot of important things," Sünderhauf said.

"But you need to combine these aspects with being able to detect objects and understand them."

Since it was launched in the middle of the year, the competition has had 111 submissions from 18 teams all around the world and Sünderhauf said that while results have been promising, there is still a long way to go to where they want to be.

The competition provides participants with 200,000 realistic images of living spaces from 40 simulated indoor video sequences, including kitchens, bedrooms, bathrooms and even outdoor living areas, complete with clutter, and rich with uncertain objects.

Entrants are required to develop the best possible system of probabilistic object detection, which can accurately estimate spatial and semantic uncertainty.

Sünderhauf hopes that the ongoing nature of the challenge will motivate teams to come up with a solution which may well propel robotics research and application on a global scale.

"I think everybody's a little bit competitive and if you can compare how good your algorithm and your research is with a lot of other people around the world who are working on the same problem, it's just very inspiring," Sünderhauf said.

"It's like the Olympic Games -- when everybody competes under the same rules, and you can see who is doing the best."

In November, Sünderhauf will travel with members of his team to the annual International Conference on Intelligent Robots and Systems (IROS) held in Macao, China to present and discuss their findings so far.

As one of three leading robotics conferences in the world, IROS is a valuable opportunity for researchers to come together to compare notes, and collaborate on taking technology to the next level.

"There will be a lot of interaction and discussion around the ways forward and that will be really exciting to see what everybody thinks and really excited to see different directions," Sünderhauf said.

TOP STORIES
EDITOR’S CHOICE
MOST VIEWED
EXPLORE XINHUANET
010020070750000000000000011100001385028851
主站蜘蛛池模板: 桃色一区 | 色婷婷久久久 | 成人动漫一区二区三区 | 日本不卡一 | 99自拍视频 | av视| 欧美自拍偷拍 | 天堂av亚洲 | 成人在线观看网址 | 国产精品后入内射日本在线观看 | 日本一区二区三区四区在线观看 | 男男play视频| 亚洲久爱 | 爱爱中文字幕 | 福利资源在线 | 国产三级精品三级在线观看 | 日产欧产va高清 | 专业操老外 | 亚洲综合资源 | 亚州国产精品 | 碰碰97| av中亚 | 黄色日批视频 | 欧美三级电影在线观看 | 久久99热精品 | 久久性生活 | 一起操网址 | 精品国产自 | aaa黄色| 天天舔天天舔 | 久久精品9 | 亚色影库 | 九九小视频 | 国产精品久久久久av | 黄色三及| 国产午夜三级 | 成人免费视频一区二区三区 | 国产亚洲在线 | 日韩欧美激情在线 | 国产xxxx在线 | japanese中文字幕 | 中国a一片一级一片 | 黑人巨大猛交丰满少妇 | 欧美一区二区三区四 | 精品国产影院 | 一级久久久久久 | 久久国产网站 | 麻豆久久久久久 | 性囗交免费视频观看 | 国产视频成人 | 久久麻豆av| 在线99| www黄色com| 国产极品一区二区 | 91avcom| 亚洲精品合集 | 亚洲一级片在线观看 | 少妇高潮迭起 | 国产成人无码精品久久二区三 | 亚洲午夜精品福利 | 欧美日韩一级黄色片 | 久久精品国产亚洲av香蕉 | 老司机午夜精品视频 | 性毛片| 男人久久天堂 | 欧美激情四区 | 日本一区二区三区视频免费看 | 国产精品一级二级三级 | 中文字幕乱视频 | av无码av天天av天天爽 | 成人麻豆视频 | 青青草免费公开视频 | 亚洲a色| 中文字幕永久在线观看 | 日韩素人 | 寡妇一级片| 伊人艹 | 在线亚洲人成电影网站色www | 69堂成人精品免费视频 | 懂色av一区二区三区在线播放 | 色呦呦网站入口 | 久久五月天婷婷 | 亚洲国产剧情 | 91人妻一区二区三区 | 日韩精品中文字幕在线播放 | 日韩视频区 | 大肉大捧一进一出好爽mba | 亚洲专区av | 中文字幕一区二区三区免费看 | 少妇一级淫片免费视频 | 夫妻啪啪呻吟x一88av | 丝袜亚洲综合 | 亚洲欧美激情在线 | 两口子交换真实刺激高潮 | 夜夜操夜夜爽 | 五月婷婷,六月丁香 | 亚洲va在线观看 | 少妇太爽了太深了太硬了 | 性开放网站|