• DocumentCode
    3636735
  • Title

    Experimental comparison of AdaBoost algorithms applied on leg detection with different range sensor setups

  • Author

    Srećko Jurić-Kavelj;Ivan Petrović

  • Author_Institution
    Department of Control and Computer Engineering, University of Zagreb, Faculty of Electrical Engineering and Computing, Croatia
  • fYear
    2010
  • Firstpage
    267
  • Lastpage
    272
  • Abstract
    When tracking people or other moving objects with a mobile robot, detection is the first and most critical step. At first most researchers focused on the tracking algorithms, but recently AdaBoost (supervised machine learning technique) was used for people legs detection in 2D range data. The results are promising, but it is unclear if the obtained classifier could be used on the data from another sensor. As it would be a huge inconvenience having to train a classifier for every sensor (setup), we set out to find if, and when is a classifier trained on one sensor setup transferable to another sensor setup. We tested two sensors in five different setups. In total, we acquired 2455 range scans. Experiments showed that the classifier trained on noisier sensor data performed better at classification of data coming from other sensor setups. Classifiers trained on less noisy data were shown to be overconfident, and performed poorly on noisy data. Furthermore, experiments showed that classifiers learned on ten times smaller datasets performed as good as classifiers trained on larger datasets. Since AdaBoost is a supervised learning technique, obtaining same classifier efficiency with significantly smaller dataset means less hand labeling of the data for the same results.
  • Keywords
    "Leg","Object detection","Mobile robots","Boosting","Robot sensing systems","Thumb","Legged locomotion","Control engineering computing","Machine learning algorithms","Machine learning"
  • Publisher
    ieee
  • Conference_Titel
    Robotics in Alpe-Adria-Danube Region (RAAD), 2010 IEEE 19th International Workshop on
  • Print_ISBN
    978-1-4244-6885-0
  • Type

    conf

  • DOI
    10.1109/RAAD.2010.5524573
  • Filename
    5524573