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  • Hello, and welcome to BotField. Imagine that you are in your house, but

  • you can't tell where you are because you're wearing a blindfold.

  • You know your house pretty well so you could probably walk around

  • and bump into some walls and you'd be able to figure out where you were.

  • But imagine that you're also wearing oven mitts and a blow up sumo wrestling costume.

  • basically you've become a robot. You

  • can't see, you can't move, and all of your sensors

  • are really terrible. The robot actually has an advantage, though,

  • because it can simulate multiple copies of itself.

  • This is called a particle filter. Particle filters are basically just

  • finding a robot using lots and lots of robots.

  • Here's a map. The black areas are obstacles and the lighter areas are

  • spaces where the robot can drive around. The robot knows what this map looks like,

  • but it doesn't know where it is on the map.

  • But, of course, you're an all-knowing deity so you know where the robot is on

  • the map. You're just way too busy to tell the robot.

  • What the robot can do is place many many many simulations of

  • itself on the map. You can imagine that if there were

  • enough robots, at least one robot would end up in the same position as the real robot.

  • When the real robot moves it has the simulated robots move in exactly the

  • same way, just with a little bit of error.

  • The robot is actually really really terrible, and when you tell the robot to

  • move straight forward, it won't. It'll turn as it drives,

  • it won't go quite far enough, or it a little bit

  • too far. This could be because the floor is slippery,

  • or maybe the wheels don't drive at the same speed.

  • In other words, the robot might end up in the right place or it could end up

  • here, or here, or here, or any of these places.

  • This graph can tell you how to make your robot do things totally wrong.

  • In this case, the location of the robot is along the bottom and the likelihood

  • that the robot is at that location is on the side. This curve is called a

  • Gaussian curve after a guy named Gauss, but it's also called a bell curve.

  • When the robot moves it's most likely to end up where it's supposed to be but it's

  • also very likely to end up near where it's supposed to be.

  • It's unlikely to end up far from where it's supposed to be, but

  • it could be there. In fact, the robot could wind up anywhere.

  • The robot sensors are also really terrible.

  • The sensors tell you how far away the next wall is. If that wall is, say,

  • 30 inches away, the sensors will tell you that the wall

  • is 29 inches away, or sometimes it will tell you that the wall is 20 inches away.

  • In the simulations, each of these robots actually has nine different sensors and

  • all of them are terrible. So you can now move lots of robots really badly

  • and you can read lots of sensors really badly.

  • How does this help you find which simulated robot is closest to the real

  • robot's position? This step is called redistribution.

  • I'll show you an example. Here's a simulated robot whose sensor

  • reads 12 inches. The real sensor on the real robot reads

  • 24 inches. You have to find out: if the real robot

  • were at the simulated robot's position, what is the probability that it would

  • return the real sensor's reading? This probability can be found using the

  • bell curve. Just set the center of the curve at the

  • simulated sensor's reading, or 12 inches, and then, depending on the amount of

  • error, you stretch the curve out more or less. In this case 24 inches

  • falls about here on the curve, and if you calculate the area under the

  • curve you get the probability. In this case 25 percent. If the real robot were

  • at the same location as a simulated robot, it would have a

  • 25 chance of getting a reading of 24 inches from the sensor.

  • If we add a few other robots here, they'll have different percentages

  • based on their readings. Remember, these percentages describe how similar

  • the real sensor readings and the simulated sensor readings are to each

  • other, and not where the robot is. The robot

  • could be near or far away from these three robots.

  • The robots are removed from the map and then placed back on the map

  • according to the probabilities. Positions with higher probabilities are more

  • likely to have one or multiple robots placed there,

  • and the robots will be placed at exactly the same location. I've overlapped them a

  • little bit here so you can see that there are

  • multiple robots. Positions with low probabilities are

  • unlikely to have a robot. So, maybe this is the final distribution of robots.

  • Then, the robots can be moved, redistributed, moved, and redistributed

  • again and again in a loop. Over time, the robots begin to cluster

  • around a single spot. Sometimes, other clusters might break off

  • into areas that look similar to the one the real robot is in,

  • but they disappear as the robot moves into a new area.

  • The exception to this is when the robot is driving somewhere where the map looks

  • exactly the same from several locations. The robot could be in any of these four

  • places and the sensor readings would always be exactly the same

  • no matter how the robot moves. If there ends up being only one cluster,

  • where the final cluster ends up is actually just a matter of chance.

  • If the clusters don't form in the right place you can

  • increase the number of robots, or you can also

  • make the robots scatter a little bit every time you redistribute the robots.

  • You can also kidnap the robot (that's actually what it's called in robotics),

  • then detect when the cluster is in the wrong spot and re-scatter the robots.

  • If you're interested in exploring particle filters more, we have the app

  • available for download on github. It's linked below in the description.

  • You can move the robot, control how the simulated robots look

  • and how they move, and a bunch of other things. If you enjoy coding, you can take

  • a look and modify the code on github to explore the particle filter even more.

  • We hope you enjoyed learning about particle filters.

Hello, and welcome to BotField. Imagine that you are in your house, but

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Particle Filters | Robot Localization

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    Li Chien に公開 2022 年 02 月 24 日
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