Adriana Kovashka
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Papers from this author
Context for Object Detection Via Lightweight Global and Mid-Level Representations
Mesut Erhan Unal, Adriana Kovashka
Auto-TLDR; Context-Based Object Detection with Semantic Similarity
Abstract Slides Poster Similar
We propose an approach for explicitly capturing context in object detection. We model visual and geometric relationships between object regions, but also model the global scene as a first-class participant. In contrast to prior approaches, both the context we rely on, as well as our proposed mechanism for belief propagation over regions, is lightweight. We also experiment with capturing similarities between regions at a semantic level, by modeling class co-occurrence and linguistic similarity between class names. We show that our approach significantly outperforms Faster R-CNN, and performs competitively with a much more costly approach that also models context.