机器人如何实时确定他们的状态，并从带有噪声的传感器测量量获得周围环境的信息？在这个模块中，你将学习怎样让机器人把不确定性融入估计，并向动态和变化的世界进行学习。特殊专题包括用于定位和绘图的概率生成模型和贝叶斯滤波器。

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來自 University of Pennsylvania 的課程

机器人学：估计和学习

274 個評分

机器人如何实时确定他们的状态，并从带有噪声的传感器测量量获得周围环境的信息？在这个模块中，你将学习怎样让机器人把不确定性融入估计，并向动态和变化的世界进行学习。特殊专题包括用于定位和绘图的概率生成模型和贝叶斯滤波器。

從本節課中

Gaussian Model Learning

We will learn about the Gaussian distribution for parametric modeling in robotics. The Gaussian distribution is the most widely used continuous distribution and provides a useful way to estimate uncertainty and predict in the world. We will start by discussing the one-dimensional Gaussian distribution, and then move on to the multivariate Gaussian distribution. Finally, we will extend the concept to models that use Mixtures of Gaussians.

- Daniel LeeProfessor of Electrical and Systems Engineering

School of Engineering and Applied Science

This week, we'll learn about the Gaussian distribution for

statistical modeling in robotics.

Gaussian distribution is a widely used continuous probabilistic representation,

and it provides a useful way to estimate uncertainty in the world.

We'll start by discussing the one-dimensional Gaussian distribution, and

then move on to the multivariate Gaussian.

Finally, we'll extend the concept to models that use mixtures of Gaussians.

In this lecture, let's learn how we can express

uncertainty with one-dimensional Gaussians.

Before we talk about the details,

it is important to understand why we learn about the Gaussian distribution.

What makes the Gaussian distribution useful and important?

First, only two parameters are needed to specify the Gaussian.

They are called the mean and variance, and

they capture the essense of the distribution.

They are also easy to compute and interpret.

Second, mathematically the distribution has some nice properties.

For example, product of Gaussian distributions forms another Gaussian.

So you don't need to worry about encountering other forms of distributions

when you perform operations on the Gaussian model.

Lastly and more theoretically,

the central limit theorem tells us that the expectation of the mean of

any random variable converges to the Gaussian distribution.

That implies Gaussian is a proper choice for modeling noise and uncertainty.

Because of both practical and

theoretical benefits, we use the Gaussian distribution.

As an example, let's look at an image processing problem.

We'll see how the Gaussian distribution can be used to model a target color.

Here is a view from a soccer-playing robot's head-mounted camera.

Clearly there are two balls in the image.

One is red and another is yellow.

The robot wishes to detect the yellow ball so that it can kick it.

It is trivial for humans to make this distinction.

But robots can find it difficult to map raw pixel values

into colors like red and yellow.

What robots need to detect the ball is a color model that represents redness or

yellowness.

To this end, let's look into the pixels of only the yellow ball in the image.

We can segment out the yellow ball like this and

really inspect the hue of these pixels in this example.

Hue is a component of the HSV representation of colors.

Let's plot a histogram of the yellow ball pixels based on the hue value.

As you can see, but here is not a single value.

Instead, the distribution of values is centered at around 53 and

spreads out to a certain extent.

If we naively use all the values within the histogram,

it will require a lot of memory, as many memory as the number of pixels.

One succinct way of capturing this center and spread is to use a Gaussian model.

Now we're going to try to understand the mathematical expression and

the parameters of the Gaussian model.

After that, let's come back to this example again.

Gaussian distribution is expressed as an exponential term multiplied by a scalar.

We want to know the probability that x, the variable,

lies within our Gaussian distribution.

We call this probability density function.

We use p(x) to write this.

Mu is the mean of our Gaussian and sigma is its standard deviation.

When it's squared, we call it variance.

Mu and sigma are the two model parameters we described earlier in the first slide.

In our example of the colored ball x is the hue value of a sampled pixel.

p(x) is the probability that this sampled pixel belongs to a yellow

ball given the mean and variance of our hue model of the yellow ball,

which we are going to estimate later.

I think everyone likes a picture.

Let's think about what Gaussian would look like.

We'll first consider when a distribution has zero mean and univariance.

This is a often called the standard normal distribution.

If you'll look at the graph and

look inside the exponential parts of the expression, you will see this

distribution is symmetric about the mean, which is 0 in this case.

Also you should notice that the value of p(x) gets very small

as x goes far from the mean.

This is due to the minus sign inside the exponential function.

The last thing to notice is the scalar term outside the exponential function.

Remember Gaussian is a probability distribution and

thus its integral, the integral of p(x), must be 1.

Now let's consider other cases with different values for the mean.

The gray curve is a standard Gaussian curve.

Compared to this, when the mean is -1,

the curve is shifted to the left by 1.

If the mean is 1, the graph is shifted to the right by 1.

The mean value determines the center of the distribution.

We can also say that the peak location of the distribution changes.

Critically, the actual shape has not been changed, only shifted.

The variance changes the spread of the distribution.

If the variance increases to 2,

the curve spreads out as compared to the standard Gaussian curve.

Also, the peak value decreases so that the integral is still 1,

which fulfills the properties of a probability density function.

Conversely, a smaller variance tightens the curve and

the peak value becomes bigger as well.

So that the integral remains 1.

We have seen the two parameters of the Gaussian distribution.

The mean mu represents the center of the distribution.

And the variance sigma squared represents the spread of the distribution.

Now that we have understood the two parameters of the Gaussian,

let's get back to the ball color example and

try to apply what we've learned to represent the ball color.

Instead of having all the data points in this histogram,

we can find a Gaussian curve with some mean and variance

that approximates the sampled distribution using only two numbers.

The mean here is roughly the peak of the histogram,

while the variance signifies the spread of the sample distribution.

Having a larger variance implies a larger uncertainty of

what hue values are likely to be yellow.

On the other hand, If we had a small variance,

you'd be more certain of what yellow actually is.

We are going to talk about how to estimate the parameters

from data in the next lecture.