Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Orchestrating the Symphony of Prompt Distribution Learning for Human-Object Interaction Detection

About

Human-object interaction (HOI) detectors with popular query-transformer architecture have achieved promising performance. However, accurately identifying uncommon visual patterns and distinguishing between ambiguous HOIs continue to be difficult for them. We observe that these difficulties may arise from the limited capacity of traditional detector queries in representing diverse intra-category patterns and inter-category dependencies. To address this, we introduce the Interaction Prompt Distribution Learning (InterProDa) approach. InterProDa learns multiple sets of soft prompts and estimates category distributions from various prompts. It then incorporates HOI queries with category distributions, making them capable of representing near-infinite intra-category dynamics and universal cross-category relationships. Our InterProDa detector demonstrates competitive performance on HICO-DET and vcoco benchmarks. Additionally, our method can be integrated into most transformer-based HOI detectors, significantly enhancing their performance with minimal additional parameters.

Mingda Jia, Liming Zhao, Ge Li, Yun Zheng• 2024

Related benchmarks

TaskDatasetResultRank
Human-Object Interaction DetectionHICO-DET--
252
Human-Object Interaction DetectionHICO-DET (NF-UC)
mAP (Full)35.5
56
Human-Object Interaction DetectionV-COCO
AP Role (Scenario 1)67.6
44
Human-Object Interaction DetectionHICO-DET RF-UC (test)
Unseen mAP36.38
23
Showing 4 of 4 rows

Other info

Follow for update