A Study of Failure Modes in Two-Stage Human-Object Interaction Detection
Lemeng Wang, Qinqian Lei, Vidhi Bakshi, Daniel Yi, Yifan Liu, Jiacheng Hou, Asher Seng Hao, Zheda Mai, Wei-Lun Chao, Robby T. Tan, Bo Wang

TL;DR
This paper investigates the failure modes of two-stage human-object interaction detection models by analyzing their behavior across different scene configurations to understand their limitations beyond overall accuracy.
Contribution
It introduces a method to analyze HOI model failures through interpretable perspectives and curated scene configurations, revealing insights into robustness and reasoning limitations.
Findings
Models struggle with complex multi-person scenes.
High accuracy does not imply robust reasoning.
Failure patterns vary across scene configurations.
Abstract
Human-object interaction (HOI) detection aims to detect interactions between humans and objects in images. While recent advances have improved performance on existing benchmarks, their evaluations mainly focus on overall prediction accuracy and provide limited insight into the underlying causes of model failures. In particular, modern models often struggle in complex scenes involving multiple people and rare interaction combinations. In this work, we present a study to better understand the failure modes of two-stage HOI models, which form the basis of many current HOI detection approaches. Rather than constructing a large-scale benchmark, we instead decompose HOI detection into multiple interpretable perspectives and analyze model behavior across these dimensions to study different types of failure patterns. We curate a subset of images from an existing HOI dataset organized by…
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