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3 months ago

Category Query Learning for Human-Object Interaction Classification

Chi Xie Fangao Zeng Yue Hu Shuang Liang Yichen Wei

Category Query Learning for Human-Object Interaction Classification

Abstract

Unlike most previous HOI methods that focus on learning better human-object features, we propose a novel and complementary approach called category query learning. Such queries are explicitly associated to interaction categories, converted to image specific category representation via a transformer decoder, and learnt via an auxiliary image-level classification task. This idea is motivated by an earlier multi-label image classification method, but is for the first time applied for the challenging human-object interaction classification task. Our method is simple, general and effective. It is validated on three representative HOI baselines and achieves new state-of-the-art results on two benchmarks.

Code Repositories

charles-xie/cql
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
human-object-interaction-detection-on-hicoCQL+GEN-VLKT-L
mAP: 36.03
human-object-interaction-detection-on-hicoCQL+GEN-VLKT-B
mAP: 35.36

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Category Query Learning for Human-Object Interaction Classification | Papers | HyperAI