Title :
Data-Driven Objectness
Author :
Hongwen Kang ; Hebert, Martial ; Efros, Alexei A. ; Kanade, Takeo
Author_Institution :
Sch. of Comput. Sci., Carnegie Mellon Univ., Pittsburgh, PA, USA
Abstract :
We propose a data-driven approach to estimate the likelihood that an image segment corresponds to a scene object (its “objectness”) by comparing it to a large collection of example object regions. We demonstrate that when the application domain is known, for example, in our case activity of daily living (ADL), we can capture the regularity of the domain specific objects using millions of exemplar object regions. Our approach to estimating the objectness of an image region proceeds in two steps: 1) finding the exemplar regions that are the most similar to the input image segment; 2) calculating the objectness of the image segment by combining segment properties, mutual consistency across the nearest exemplar regions, and the prior probability of each exemplar region. In previous work, parametric objectness models were built from a small number of manually annotated objects regions, instead, our data-driven approach uses 5 million object regions along with their metadata information. Results on multiple data sets demonstrates our data-driven approach compared to the existing model based techniques. We also show the application of our approach in improving the performance of object discovery algorithms.
Keywords :
image segmentation; object detection; object recognition; ADL; daily living; data-driven objectness; domain specific objects; exemplar object regions; image region proceeds; image segment; metadata information; object discovery algorithms; Databases; Estimation; Image color analysis; Image segmentation; Portable computers; Shape; Vectors; Objectness; activity of daily living (ADL); data-driven; object discovery; product images; segment selection;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2315811