Deep Context-Aware Kernel Networks
Context plays a crucial role in visual recognition as it provides complementary clues for different learning tasks including image classification and annotation. As the performances of these tasks are currently reaching a plateau, any extra knowledge, including context, should be leveraged in order...
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Zusammenfassung: | Context plays a crucial role in visual recognition as it provides
complementary clues for different learning tasks including image classification
and annotation. As the performances of these tasks are currently reaching a
plateau, any extra knowledge, including context, should be leveraged in order
to seek significant leaps in these performances. In the particular scenario of
kernel machines, context-aware kernel design aims at learning positive
semi-definite similarity functions which return high values not only when data
share similar contents, but also similar structures (a.k.a contexts). However,
the use of context in kernel design has not been fully explored; indeed,
context in these solutions is handcrafted instead of being learned. In this
paper, we introduce a novel deep network architecture that learns context in
kernel design. This architecture is fully determined by the solution of an
objective function mixing a content term that captures the intrinsic similarity
between data, a context criterion which models their structure and a
regularization term that helps designing smooth kernel network representations.
The solution of this objective function defines a particular deep network
architecture whose parameters correspond to different variants of learned
contexts including layerwise, stationary and classwise; larger values of these
parameters correspond to the most influencing contextual relationships between
data. Extensive experiments conducted on the challenging ImageCLEF Photo
Annotation and Corel5k benchmarks show that our deep context networks are
highly effective for image classification and the learned contexts further
enhance the performance of image annotation. |
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DOI: | 10.48550/arxiv.1912.12735 |