求高手迅速英语翻译成中文

求高手迅速英语翻译成中文
whentherobotsenses,andwhenitmoves,respectively.
Suppose the robot just sensed s.Markov localization then
P (l j s) = ff P(s j l) P(l)
where ff is a normalizer that ensures that the resulting prob-
abilitiessumuptoone. Whentherobotmoves,Markov
localization updates P(l)
ability:
P ( 0l) =
using the Theorem of total prob-
Z
P ( 0lj a;l) P(l) dl
Here adenotesanactioncommand.Thesetwoupdate
equationsformthebasisofMarkovlocalization. Strictly
speaking, they are only applicable if the environment meets
aconditional independenceassumption(Markovassump-
tion), which specifiesthat the robot's pose is the only state
therein. Put differently, Markov localization applies only to
static environments.
Unfortunately, the standard Markov localization ap-
proachis prone to fail in denselypopulated environments,
sincethose violate the underlying Markovassumption.In
the museum, people frequently blocked the robot's sensors,
asillustrated in Figure 1.Figuratively speaking,if people
line up as a "wall" in front of the robot—which they often
did—,thebasicMarkovlocalizationparadigmmakesthe
robot eventually believe that it is indeed in front of a wall.
Toremedythisproblem,RHINOemploysan"entropy
filter" (Fox et al. 1998b). This filter, which is applied to all
proximity measurementsindividually, sortsmeasurements
intotwobuckets: onethatisassumedtocontainallcor-
rupted sensor readings, and one that is assumedto contain
onlyauthentic(non-corrupted) ones. Todeterminewhich
sensorreadingiscorruptedandwhichoneisnot,theen-
tropy filter measuresthe relative entropy of the belief state
before and after incorporating a proximity measurement:
P(l) logP(l) dl +P(l j s)logP(l j s) dl
lSensorreadingsthatincreasetherobot'scertainty
(_H(l;s) > 0) are assumed to be authentic. All other sen-
sor readings are assumedto be corrupted and are therefore
notincorporatedintotherobot'sbelief. Inthemuseum,
certainty filters reliably identified sensor readings that were
corruptedbythepresenceofpeople,aslongastherobot
knew its approximate pose.Unfortunately, the entropy fil-
ter canpreventrecoveryoncethe robot loosesitsposition
entirely.To prevent this problem, our approach also incor-
porates a small number of randomly chosen sensor readings
in addition to those selected by the entropy filter.See (Fox
et al. 1998b) for an alternative solution to this problem.
英语人气:531 ℃时间:2020-03-28 09:11:05
优质解答
当机器人的感觉,当它移动时,分别为.
假设机器人只是感觉到秒马尔可夫定位,然后
P(升Ĵ s)为FF p上(的J升)芘(升)
其中FF是一个正规化,确保由此产生的概率
能力总结为一个.当机器人的动作,马尔可夫
本地化更新P(升)
能力:
P(:01)=
使用的总概率定理,
ž
P(〇升Ĵ了;升)芘(升)分升
这里指的行动命令.这两个更新
方程的形式对马尔可夫定位的基础.严格
而言,他们是只适用的环境符合
条件独立性假设(马尔可夫假定:-
tion),其中规定,该机器人的构成是唯一的国家
其中.换句话说,马尔可夫定位只适用于
静态环境.
不幸的是,标准马尔可夫定位的AP -
proach容易失败在人口稠密的环境中,
因为这些违反基本马尔可夫假设.在
博物馆里,人们经常堵住了机器人的传感器,
如图1所示.形象地说,如果人们
排队为“墙”在机器人的前面,他们往往
确实,基本马尔可夫定位模式,使
机器人终于相信它确实是在一墙前.
为了解决这个问题,犀牛采用了“熵
过滤器“(福克斯等人.1998年b).此过滤器,它是适用于所有
个别接近测量,各种测量
两个水桶:一个包含所有被假定为肺心病,
rupted传感器的读数,而且是假设包含
只有真实的(非损坏)的.要确定哪些
传感器的读数已损坏,这主要是因为,恩,
熵的信念状态相对熵过滤措施
前后装有感应测量:
P(L)的疏水常数(升)升+ P(升Ĵ s)疏水常数(升Ĵ s)分升
升传感器的读数,增加机器人的确定性
(_H(升中,S)“0)被认为是真实的.所有其他森
长远发展策略的读数被认为是损坏的,因此
没有纳入机器人的信念.在博物馆里,
可靠地确定过滤器传感器读数被发现
败坏了在场的人,只要机器人
知道它的大致构成.不幸的是,熵过滤,
之三可以防止机器人一旦恢复其立场松动
完全.为了避免这个问题,我们的做法也incor -
porates一个随机选择的传感器读数少数
除了由选定的过滤器的熵.见(福克斯
等.1998年b)对于这个问题的替代解决方案
我来回答
类似推荐
请使用1024x768 IE6.0或更高版本浏览器浏览本站点,以保证最佳阅读效果。本页提供作业小助手,一起搜作业以及作业好帮手最新版!
版权所有 CopyRight © 2012-2024 作业小助手 All Rights Reserved. 手机版