青青草原综合久久大伊人导航_色综合久久天天综合_日日噜噜夜夜狠狠久久丁香五月_热久久这里只有精品

USING OPENCV FOR SIMPLE OBJECT DETECTION

https://solderspot.wordpress.com/2014/10/18/using-opencv-for-simple-object-detection/

My current project is to build a bot for the “Blue Block Challenge”. The goal is to create an autonomous robot that can move about a table, without falling off, find a blue colored block and move it onto a red colored disc, which is somewhere else on the table.

My very unoriginal plan is to have a video camera equipped Raspberry Pi be the eyes and brains of the robot. The Pi’s logic grabs individual frames of video from the camera and processes them using OpenCV to detect regions of a particular color and directs the robot accordingly.

However, my first goal is to learn how to use OpenCV to perform the object detection, which is the topic of this post.

Also, because this code will be running on the Raspberry Pi, which does not have a lot of processing power, it is extremely important that the detection method be as simple and efficient as possible. At this point I’m not even sure if the Raspberry Pi can achieve the required level of processing needed to get the bot to work well.

What is OpenCV

OpenCV is a very popular and powerful image processing library written in C/C++. It has lots of code for doing all sorts of image analysis and manipulation. You can visit opencv.org to learn more and there is a special page (opencv.org/books.html) that lists lots of books available for the library.

1406903806practical_opencv

I bought “Practical OpenCV” myself but it is way overpriced for what it is so I cannot recommend it. Still, it did get me up and running quickly.

cv::Mat

OpenCV is typically used for image processing but it is a more general purpose library than that. It actually works with matrices using the class cv::Mat.

However, to do any image processing we first need to create a cv::Mat instance for our image.

For example, if we have the typical 8 bit RGBA image we can create the cv::Mat for it using the constructor:

Mat::Mat(int rows, int cols, int type, void* data, size_t step=AUTO_STEP)

#include <opencv2/opencv.hpp>
 
void *first_pixel = <pointer to start of 8 bit RGBA image data>;
int rows = <height of image>;
int cols = <width of image>;
cv::Mat frame = cv::Mat(rows, cols, CV_8UC4, first_pixel);

CV_8UC4 tells OpenCV that each entry in the matrix is made up of 4 consecutive unsigned 8 bit values (i.e. 0 – 255).

Converting Color Space to HSV

Our image format is in 24 bit RGBA for each pixel, i.e. an unsigned byte (0-255) for red, green, blue and alpha components – in this case we ignore alpha as the image is coming from a camera.

The first step is to convert the input frame from RGB format to HSV thus:

cv::Mat rgb_frame = get_frame_from_video();
cv::Mat hsv_frame;
cv::cvtColor(rgb_frame, hsv_frame, CV_RGB2HSV);

The HSV format is much more useful for doing based color processing than using RGB because we get a single channel (H) that holds the color value of the pixel and two other channels (S and V) that hold the saturation level and brightness level of the pixel.

What is HSV?

HSV_color_solid_cylinder_alpha_lowgammaHSV is a three value format for describing a color with the properties “hue”, “saturation” and “value”.

The first property “Hue” is given as an angle from 0° to 360° of a color wheel where 0° is pure red, 120° is pure green and 240° is pure blue. For example, purple would be half way between blue and red, i.e. 300°

The other two properties are a little harder to describe but we can think of “saturation” as saying how strong or pale the color is, and “value” says how bright or dark the color is. You can get the technical low-down here: http://en.wikipedia.org/wiki/HSL_and_HSV

In OpenCV the HSV format is stored as 3 unsigned 8 bit values. For saturation and value the ranges 0-255 are used. For the hue component we also have a maximum range of 0 to 255 but hue is a value from 0 to 360 so OpenCV stores the hue as half the angle, i.e. range 0 to 180.

Color Thresholding

Thresholding is a fundamental image processing technique whereby we replace each pixel in an image with a “yes” or “no” value depending on whether that pixel meets some criteria. We effectively create a black and white version of the original image where “white”, i.e. value 255, means “yes” and “black” (0) means “no”.

In our case we are going to use a function called cv::inRange()

cv::Scalar   min(hueMinValue, satMinValue, volMinValue);
cv::Scalar   max(hueMaxValue, satMaxValue, volMaxValue)
cv::Mat threshold_frame;
cv::inRange( hsv_frame, min, max, threshold_frame);

The cv::inRange() operation simply compares each HSV value in the frame and replaces it with the value 0 if it is outside the min/max values or with 255 if it is inside the range.

Here is an example:

cv::Scalar   min(220/2, 0, 0);
cv::Scalar   max(260/2, 255, 255)
cv::Mat threshold_frame;
cv::inRange( hsv_frame, min, max, threshold_frame);

threshold1

In this case we are using a Hue range of 220 to 260 which is a range of blues, and saturation and volume range of 0 – 255, which basically means any saturation and any volume.

In the black and white image the white areas are pixels that fall into the hue range we set. You can see that the blue brick shows up but so does a lot of other blueish surfaces.

In this case our blue brick has a very strong color so we can adjust the saturation min range higher so that we can remove paler blues from the threshold. If we set the saturation range to be 190 to 255:

cv::Scalar   min(220/2, 190, 0);
cv::Scalar   max(260/2, 255, 255)
cv::Mat threshold_frame;
cv::inRange( hsv_frame, min, max, threshold_frame);

We get the following threshold image:
threshold2

As you can see we’ve isolated the blue brick more. Our brick is also fairly well lit so we can remove the darker areas from the threshold image by increase the minimum threshold for value to say 80, so we have a range of 80 to 255:

cv::Scalar   min(220/2, 190, 80);
cv::Scalar   max(260/2, 255, 255)
cv::Mat threshold_frame;
cv::inRange( hsv_frame, min, max, threshold_frame);

threshold3

We’ve pretty much isolated the brick now. There are still some noise in the image but we can remove them by doing the following trick:

cv::Mat str_el = cv::getStructuringElement(cv::MORPH_RECT, cv::Size(3, 3));
morphologyEx(threshold_frame, threshold_frame, cv::MORPH_OPEN, str_el);
morphologyEx(threshold_frame, threshold_frame, cv::MORPH_CLOSE, str_el);

And we get the final result:

threshold4

Finding the Objects

As is the threshold image is not much use to our robot. We need to somehow find the positions of the white areas and their size. We can do this by finding the circles that enclose each of the white areas. This would provide us with an array of positions and radii which our robot can actually use to track objects.

OpenCV has the function cv::findContours() that finds all the “contours” or edges of an image as an array of points. In fact it creates an array of these arrays of points, each set of points represents a distinct region in the image. Using another function called cv::minEnclosingCircle() we can convert these arrays of points into arrays of center points and radii:

cv::vector<cv::vector<cv::Point> > contours;
cv::vector<cv::Vec4i> heirarchy;
cv::vector<cv::Point2i> center;
cv::vector<int> radius;
 
cv::findContours( threshold_frame.clone(), contours, heirarchy, CV_RETR_TREE, CV_CHAIN_APPROX_NONE);
 
size_t count = contours.size();
 
for( int i=0; i<count; i++)
{
    cv::Point2f c;
    float r;
    cv::minEnclosingCircle( contours[i], c, r);
 
    if (!enableRadiusCulling || r >= minTargetRadius)
    {
        center.push_back(c);
        radius.push_back(r);
    }
}

In the code I’ve also put in logic to reject circles with radii less than some minimum value. This way I can cull out any remaining noise or small objects. In my particular case the objects I’m detecting are going to be largish compared to the field of view of the camera.

To verify the code is working correctly we can then use the cv:circle() function to draw in the possible targets as a red circle:

size_t count = center.size();
cv::Scalar red(255,0,0);
 
for( int i = 0; i < count; i++)
{
    cv::circle(threshold_frame, center[i], radius[i], red, 3);
}

threshold6

So now we have a pipeline that takes images from the camera and outputs possible object targets as an array of x and y image positions and radii.

Resizing the Source Image

Because I’m going to be dealing with largish areas of color, the resolution of the image does not need to be very high. In fact, as all this image processing will be happening on the Raspberry Pi it is doubly important to minimize the amount of work it has to do.

A very simple method is to just reduce the amount of data by either setting the camera up to capture low resolution images and/or resizing the image before we process it.

To do the latter we simply use the cv::resize() function:

float s = 0.5;
cv::resize( frame, frame, cv::Size(), s, s, cv::INTER_NEAREST);

This will scale the x and y axis by 50%.

OpenCVDetect App

To be better able to develop the image processing code I ended up creating an app for my Mac that lets me experiment with all the settings in realtime on a live video stream.

The source for the app is on GitHub: https://github.com/solderspot/OpenCVDetect

Screen Shot 2014-10-17 at 10.26.38 PM
Note that if you want to build this app yourself you’ll need to install OpenCV V2 on your machine. I used home brew to do that.

The controls are relatively straight forward. First select a capture device and format, and then click start. The left image view is of the live video without any processing. The right image view is of the processed image.

Below the image views are two control panels. The right hand one has the following options:

Screen Shot 2014-10-17 at 8.25.50 PM

Use the checkboxes to enable and disable features and adjust sliders accordingly.

The culling option lets you specify a minimum radius size as a percentage of the screen size.

The left hand panel has the controls for setting the color thresholding values:

Screen Shot 2014-10-17 at 8.25.18 PM

One of the limitations with the thresholding range for hue is that we can’t have ranges that span 0° without adding more logic and doing two thresholding passes. For now I have found that having hue clipped at 0 and 360 is not a problem.

I also made a quick video showing the app in action.

Conclusion

I’ve have a lot of fun playing with OpenCV on my Mac. Next step is to get it and camera capture working on the Raspberry Pi, which is proving to be laborious as this is my first time dealing with the Pi and I’m all thumbs at present.

I should clarify that what I’m doing here is not true object detection. I’m relying on the fact that the objects I’m dealing with in the challenge are the only things of their color.

Also, the color thresholding values are very dependent on ambient lighting conditions so I’ll need to calibrate the values specifically for the conditions at the time of the challenge. Basically it’s all a hack to do the minimum amount of processing possible on the Pi and it might not turn out too well.

posted on 2017-09-14 16:07 zmj 閱讀(735) 評論(0)  編輯 收藏 引用

青青草原综合久久大伊人导航_色综合久久天天综合_日日噜噜夜夜狠狠久久丁香五月_热久久这里只有精品
  • <ins id="pjuwb"></ins>
    <blockquote id="pjuwb"><pre id="pjuwb"></pre></blockquote>
    <noscript id="pjuwb"></noscript>
          <sup id="pjuwb"><pre id="pjuwb"></pre></sup>
            <dd id="pjuwb"></dd>
            <abbr id="pjuwb"></abbr>
            国产亚洲在线观看| 久久国产乱子精品免费女| 久久久久99| 亚洲免费黄色| 一本色道久久88精品综合| 精品69视频一区二区三区| 亚洲精品在线观| 国内精品久久久久久久果冻传媒| 亚洲精品一区二区三区福利| 在线观看日韩| 久久久精彩视频| 亚洲女性喷水在线观看一区| 欧美日韩在线播放一区二区| 亚洲欧洲精品一区二区| 国产欧美在线| 在线综合欧美| 欧美一区二区三区免费视频| 久久亚洲精品网站| 久久国内精品视频| 久久国产精品免费一区| 亚洲一区免费视频| 亚洲精品视频一区| 亚洲精品乱码久久久久久日本蜜臀 | 亚洲第一级黄色片| 一级成人国产| 午夜精品久久久久| 亚洲精美视频| 欧美在线视频导航| 欧美激情在线| 欧美高清视频| 亚洲高清资源| 欧美成人亚洲成人| 一区二区三区色| 久久综合五月天婷婷伊人| 中国成人黄色视屏| 蜜桃av噜噜一区| 红桃视频国产一区| 欧美大尺度在线| 亚洲欧美日韩区| 亚洲国产精品成人综合色在线婷婷| 亚洲美女性视频| 国产偷国产偷亚洲高清97cao| 欧美日韩国语| 欧美成人69av| 久久国产精品99国产| 免费视频一区二区三区在线观看| 六月丁香综合| 欧美三级乱人伦电影| 亚洲欧美另类综合偷拍| 亚洲制服av| 久久影院亚洲| 一级成人国产| 1024欧美极品| 亚洲另类自拍| 黄色精品网站| 亚洲视频免费在线| 久久国产成人| 亚洲区一区二| 西瓜成人精品人成网站| 葵司免费一区二区三区四区五区| 一区二区三欧美| 韩国成人福利片在线播放| 国内成+人亚洲| 国产自产2019最新不卡| 国产一区二区视频在线观看| 亚洲第一视频网站| 99日韩精品| 久久久999成人| 亚洲成人在线免费| 日韩午夜三级在线| 亚洲欧美激情四射在线日| 亚洲一本视频| 亚洲美女视频在线免费观看| 欧美激情第二页| 欧美.www| 日韩一二三在线视频播| 噜噜爱69成人精品| 欧美国产日韩一区二区三区| 性高湖久久久久久久久| 欧美色大人视频| 亚洲毛片在线看| 欧美成人性网| 香蕉av福利精品导航| 国产欧美一区二区三区久久人妖| 亚洲六月丁香色婷婷综合久久| 欧美一区二区三区在线| 亚洲精品免费在线播放| 欧美激情偷拍| 亚洲国产精品一区二区三区| 久久夜色精品国产欧美乱极品| 欧美亚洲三级| 久久亚洲二区| 国产免费成人在线视频| 国产亚洲女人久久久久毛片| 国产三级欧美三级日产三级99| 国产日韩欧美自拍| 亚洲精品1234| 亚洲人成在线观看| 亚洲天堂第二页| 男人的天堂成人在线| 亚洲新中文字幕| 蜜桃久久av一区| 亚洲国产精品尤物yw在线观看| 亚洲小说春色综合另类电影| 午夜精品久久久久久久| 久久久国产亚洲精品| 国产精品成人播放| 一本久道久久综合婷婷鲸鱼| 欧美激情一区二区三区全黄 | 免费在线国产精品| 欧美一区二区三区视频在线| 久久激情五月激情| 欧美v国产在线一区二区三区| 亚洲图中文字幕| 久久久久久久久综合| 欧美区日韩区| 亚洲人成在线播放| 亚洲一区二区在线看| 夜夜爽av福利精品导航| 欧美亚一区二区| 亚洲乱码精品一二三四区日韩在线| 久久精品国内一区二区三区| 男同欧美伦乱| 亚洲精品1区2区| 亚洲男人第一网站| 欧美亚洲日本一区| 国产美女精品视频| 在线视频你懂得一区| 在线亚洲欧美视频| 亚洲电影免费观看高清| 亚洲精品乱码久久久久久蜜桃麻豆| 欧美视频官网| 欧美日韩大片一区二区三区| 亚洲一级免费视频| 久久精品视频网| 亚洲国产精品成人精品| 亚洲永久视频| 亚洲精品日韩久久| 香蕉av777xxx色综合一区| 一本色道久久99精品综合| 亚洲电影在线播放| 精品88久久久久88久久久| 9l国产精品久久久久麻豆| 国产日韩三区| 在线一区观看| 亚洲免费观看高清完整版在线观看熊 | 亚洲人成网站在线播| 欧美日韩国产页| 欧美日韩一区二区欧美激情| 欧美一级视频免费在线观看| 美女诱惑黄网站一区| 久久黄色网页| 亚洲午夜一区| 亚洲裸体视频| 久久久久久久网站| 欧美大片在线观看一区| 亚洲第一网站| 久久久精品一区二区三区| 欧美一级久久久久久久大片| 美女福利精品视频| 久久精品一区二区三区中文字幕| 国产欧美精品在线| 狂野欧美性猛交xxxx巴西| 麻豆国产精品777777在线| 亚洲国产一区二区三区在线播 | 久久久之久亚州精品露出| 欧美成人一区二区| 久久久久久久久久久久久女国产乱| 亚洲狠狠丁香婷婷综合久久久| 亚洲精选中文字幕| 国产欧美日韩精品丝袜高跟鞋| 欧美专区中文字幕| 亚洲国产一区二区三区a毛片| 日韩午夜免费视频| 极品少妇一区二区三区| 国产精品扒开腿爽爽爽视频| 日韩一级裸体免费视频| 91久久精品国产| 久久国产直播| 洋洋av久久久久久久一区| 亚洲高清一区二| 久久国产精品毛片| 欧美日韩精品免费 | 欧美激情一区二区三区 | 久久免费高清| 国产综合色在线| 亚洲精选久久| 久久国产精品72免费观看| 欧美一区三区二区在线观看| 国产精品99久久不卡二区| 亚洲日本久久| 韩日成人在线| 国产欧美高清| 亚洲男人影院| 亚洲福利久久| 蜜臀91精品一区二区三区| 91久久极品少妇xxxxⅹ软件| 激情欧美一区| 亚洲国产91色在线| 亚洲女人av|