Difference between revisions of "Pose Estimation for a Mobile Device"

From Immersive Visualization Lab Wiki
Jump to: navigation, search
(Progress)
Line 18: Line 18:
  
 
* Started project.
 
* Started project.
 +
 +
== To Do List in a week==
 +
PC side:
 +
* Remove features with inconsistent measurements.
 +
* Add motion model of the camera into pose estimation cost function.
 +
* Redesign the mechanism of adding features at each key frame. (We should only add features that make the density of the features are equally spread.)
 +
 +
Mobile side:
 +
* Perform feature detection on the mobile device and record its performance.
 +
* Setup the connection between a mobile devise and the PC.
 +
  
 
== Goal ==
 
== Goal ==

Revision as of 13:25, 25 January 2013

Progress

Jan 21, 2013

  • Setup the android environment on Win7. Able to run sample programs on mobile devices.
 Environment
 - Android SDK with eclispe bundled for windows
 - Android NDK r8 for windows
 - OpenCV 2.4.3 for android. No need to recompile the library.
 Test device:
 - ASUS TF101
 - HTC EVO 3D
 Test program:
 - acceleration reader.
 - basic camera reader.

Jan 17, 2013

  • Started project.

To Do List in a week

PC side:

  • Remove features with inconsistent measurements.
  • Add motion model of the camera into pose estimation cost function.
  • Redesign the mechanism of adding features at each key frame. (We should only add features that make the density of the features are equally spread.)

Mobile side:

  • Perform feature detection on the mobile device and record its performance.
  • Setup the connection between a mobile devise and the PC.


Goal

PC side:

  • Refine the feature matching to consider the density of the features at a frame.
  • Incorporate the motion model of the camera into optimization.
  • Make the program to be multi-threaded.

Mobile side:

  • Setup basic data capturing program
  • Test on data transfer between mobile device and PC.
  • Transfer part of preprocessing program to the mobile device.