Embedded Motion Control 2014 Group 3: Difference between revisions
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From the grade of the walls compared to Pico a setpoint can be set on a certain distance in x direction, on which pico can correct to drive straight. A setpoint further away leads to smaller corrections compared to a setpoint closer to pico. The setpoint can also be uses for taking the turns. | From the grade of the walls compared to Pico a setpoint can be set on a certain distance in x direction, on which pico can correct to drive straight. A setpoint further away leads to smaller corrections compared to a setpoint closer to pico. The setpoint can also be uses for taking the turns. | ||
=Arrow Detection= | |||
=New files after corridor challenge= | =New files after corridor challenge= |
Revision as of 19:50, 3 June 2014
Group Members
Name: | Student id: |
Jan Romme | 0755197 |
Freek Ramp | 0663262 |
Anne Krus | 0734280 |
Kushagra | 0873174 |
Roel Smallegoor | 0753385 |
Janno Lunenburg - Tutor | - |
Time survey
Link: time survey group 3
Planning
Week 1 (28/4 - 4/5)
Finish the tutorials
Week 2 (5/5 - 11/5)
Be able to detect walls and convert them to start and end points
Week 3 (12/5 - 18/5)
Finish strategy to be able to successfully finish the competition
Software
Overview
In the overview the different packages (dotted boxes) and nodes (solid boxes) are displayed. The topics are displayed at the sides of the nodes.
LaserProcessing
LaserData from Pico
The data from the laser on pico is in lasercloud format. This means that the data is represented in an array of distances. The starting angle and angle increment are known. This means we have the distances from laser to objects for a range of angles.
LaserCloud to Pointcloud
Because we are going to fit lines through the walls, it would be easier to have tha data in Carthesian Coordinates. In this node the laserData is transformed into a PointCloud, which is published on the topic. It is also possible to filter the data in this node when needed. For now all data is transformed into the PointCloud.
Safety
The safety node is created for testing. When something goes wrong and Pico is about to hit the wall the safety node will publish a Bool to tell the strategy it is not safe anymore. When the code is working well safety shouldn't be needed anymore.
Obstacle Detection
Finding Walls from PointCloud data
The node findWalls reads topic "/cloud" which contains laserdata in x-y coordinates relative to the robot. The node findWalls returns a list containing(xstart,ystart) and (xend, yend) of each found wall (relative to the robot). The following algorithm is made:
- Create a cv::Mat object and draw cv::circle on the cv::Mat structure corresponding to the x and y coordinates of the laserspots.
- Apply Probalistic Hough Line Transform cv::HoughLinesP
- Store found lines in list and publish this on topic "/walls"
A visualization of the output (left: laserdata from the real Pico right: detected lines 'walls'):
Select Walls
In FindWalls lines are fitted over all the walls. In selectwalls the walls are filtered to find the two walls in the driving direction. The walls are send as a starting and endpoint. To be able to compare the walls to eachother, the begin point is projected on x=0 (at height of Pico). The closest walls left and right of Pico with the same direction are the two walls to use for navigation.
Next part should be in strategy i think
From the grade of the walls compared to Pico a setpoint can be set on a certain distance in x direction, on which pico can correct to drive straight. A setpoint further away leads to smaller corrections compared to a setpoint closer to pico. The setpoint can also be uses for taking the turns.
Arrow Detection
New files after corridor challenge
Improved strategy flowchart
See diagram, circles represent seperate nodes that communicate using topics. Blocks represent functions, which will be written in seperate c++ files and included in the "main" c++ file. This way, no one will interfere in code of someone else.
Notes (TODO)
Week3
Combine detection and strategy part
+ Determine waypoint (turnpoint)
- Find door (using end of line)
+ Turn
+ Drive out of maze
Week 4 (week after corridor challenge)
Because of the Elevator project Freek and Anne are not responsible for anything this week.
Jan and Roel will write (optimize) the wall finding algorithm and use it also for the doors. Kushagra will write the safety node.