This paper presents an empirical evaluation of the role of
context in a contemporary, challenging object detection task
– the PASCAL VOC 2008. Previous experiments with context
have mostly been done on home-grown datasets, often
with non-standard baselines, making it difficult to isolate
the contribution of contextual information. In this work,
we present our analysis on a standard dataset, using topperforming
local appearance detectors as baseline. We
evaluate several different sources of context and ways to
utilize it. While we employ many contextual cues that have
been used before, we also propose a few novel ones including
the use of geographic context and a new approach for
using object spatial support.
Alexei A. Efros, Derek Hoiem, James Hays, Martial