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Open-vocabulary Attribute Detection

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Vision-language modeling has enabled open-vocabulary tasks where predictions can be queried using any text prompt in a zero-shot manner. Existing open-vocabulary tasks focus on object classes, whereas research on object attributes is limited due to the lack of a reliable attribute-focused evaluation benchmark. This paper introduces the Open-Vocabulary Attribute Detection (OVAD) task and the corresponding OVAD benchmark. The objective of the novel task and benchmark is to probe object-level attribute information learned by vision-language models. To this end, we created a clean and densely annotated test set covering 117 attribute classes on the 80 object classes of MS COCO. It includes positive and negative annotations, which enables open-vocabulary evaluation. Overall, the benchmark consists of 1.4 million annotations. For reference, we provide a first baseline method for open-vocabulary attribute detection. Moreover, we demonstrate the benchmark's value by studying the attribute detection performance of several foundation models. Project page https://ovad-benchmark.github.io

Mar\'ia A. Bravo, Sudhanshu Mittal, Simon Ging, Thomas Brox• 2022

Related benchmarks

TaskDatasetResultRank
Attribute DetectionOVAD zero-shot cross-dataset transfer
AP (all)21.4
19
Open-vocabulary Attribute DetectionOVAD
mAP (All)21.4
9
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