Abstract :
In this study, a discriminative detector for object context is designed and tested. The context-feature is
simple to implement, feed-forward, and effective across multiple object types in a street-scenes environment.
Using context alone, we demonstrate robust detection of locations likely to contain bicycles, cars, and pedestrians.
Furthermore, experiments are conducted so as to address several open questions regarding visual context.
Specifically, it is demonstrated that context may be determined from low level visual features (simple color and
texture descriptors) sampled over a wide receptive field. At least for the framework tested, high level semantic
knowledge, e.g, the nature of the surrounding objects, is superfluous. Finally, it is shown that when the target object
is unambiguously visible, context is only marginally useful.
Keywords :
CONTEXT , learning , Scene understanding , Object detection , streetscenes