Title :
Relating Things and Stuff via ObjectProperty Interactions
Author :
Min Sun ; Byung-soo Kim ; Kohli, Pushmeet ; Savarese, Silvio
Author_Institution :
AC101 Paul G. Allen Center, Univ. of Washington, Seattle, WA, USA
Abstract :
In the last few years, substantially different approaches have been adopted for segmenting and detecting “things” (object categories that have a well defined shape such as people and cars) and “stuff” (object categories which have an amorphous spatial extent such as grass and sky). While things have been typically detected by sliding window or Hough transform based methods, detection of stuff is generally formulated as a pixel or segment-wise classification problem. This paper proposes a framework for scene understanding that models both things and stuff using a common representation while preserving their distinct nature by using a property list. This representation allows us to enforce sophisticated geometric and semantic relationships between thing and stuff categories via property interactions in a single graphical model. We use the latest advances made in the field of discrete optimization to efficiently perform maximum a posteriori (MAP) inference in this model. We evaluate our method on the Stanford dataset by comparing it against state-of-the-art methods for object segmentation and detection. We also show that our method achieves competitive performances on the challenging PASCAL ´09 segmentation dataset.
Keywords :
Hough transforms; image classification; image representation; image segmentation; maximum likelihood estimation; object detection; Hough transform based methods; PASCAL ´09 segmentation dataset; Stanford dataset; discrete optimization; geometric relationships; graphical model; maximum a posteriori inference; object detection; object property interactions; object segmentation; scene understanding; segment-wise classification problem; semantic relationships; Detectors; Electronic mail; Image color analysis; Image segmentation; Object detection; Semantics; Shape; Scene understanding; graph-cut; segmentation; semantic labeling;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2013.193