Back
Hough-based Object Detection with Grouped Features
Hough-based voting approaches have been successfully applied to object detection. While these methods can be efficiently implemented by random forests, they estimate the probability for an object hypothesis for each feature independently. In this work, we address this problem by grouping features in a local neighborhood to obtain a better estimate of the probability. To this end, we propose oblique classification-regression forests that combine features of different trees. We further investigate the benefit of combining independent and grouped features and evaluate the approach on RGB and RGB-D datasets.
@conference{Srikantha:ICIP:2014, title = {Hough-based Object Detection with Grouped Features}, booktitle = {International Conference on Image Processing}, abstract = {Hough-based voting approaches have been successfully applied to object detection. While these methods can be efficiently implemented by random forests, they estimate the probability for an object hypothesis for each feature independently. In this work, we address this problem by grouping features in a local neighborhood to obtain a better estimate of the probability. To this end, we propose oblique classification-regression forests that combine features of different trees. We further investigate the benefit of combining independent and grouped features and evaluate the approach on RGB and RGB-D datasets.}, pages = {1653--1657}, address = {Paris, France}, month = oct, year = {2014}, slug = {srikantha-icip-2014}, author = {Srikantha, Abhilash and Gall, Juergen}, month_numeric = {10} }