Exploiting Instance-based Mixed Sampling via Auxiliary Source Domain
Supervision for Domain-adaptive Action Detection
- URL: http://arxiv.org/abs/2209.15439v1
- Date: Wed, 28 Sep 2022 22:03:25 GMT
- Title: Exploiting Instance-based Mixed Sampling via Auxiliary Source Domain
Supervision for Domain-adaptive Action Detection
- Authors: Yifan Lu, Gurkirt Singh, Suman Saha, Luc Van Gool
- Abstract summary: We propose a novel domain adaptive action detection approach and a new adaptation protocol.
Self-training combined with cross-domain mixed sampling has shown remarkable performance gain in UDA context.
We name our proposed framework as domain-adaptive action instance mixing (DA-AIM)
- Score: 75.38704117155909
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We propose a novel domain adaptive action detection approach and a new
adaptation protocol that leverages the recent advancements in image-level
unsupervised domain adaptation (UDA) techniques and handle vagaries of
instance-level video data. Self-training combined with cross-domain mixed
sampling has shown remarkable performance gain in semantic segmentation in UDA
(unsupervised domain adaptation) context. Motivated by this fact, we propose an
approach for human action detection in videos that transfers knowledge from the
source domain (annotated dataset) to the target domain (unannotated dataset)
using mixed sampling and pseudo-label-based selftraining. The existing UDA
techniques follow a ClassMix algorithm for semantic segmentation. However,
simply adopting ClassMix for action detection does not work, mainly because
these are two entirely different problems, i.e., pixel-label classification vs.
instance-label detection. To tackle this, we propose a novel action instance
mixed sampling technique that combines information across domains based on
action instances instead of action classes. Moreover, we propose a new UDA
training protocol that addresses the long-tail sample distribution and domain
shift problem by using supervision from an auxiliary source domain (ASD). For
the ASD, we propose a new action detection dataset with dense frame-level
annotations. We name our proposed framework as domain-adaptive action instance
mixing (DA-AIM). We demonstrate that DA-AIM consistently outperforms prior
works on challenging domain adaptation benchmarks. The source code is available
at https://github.com/wwwfan628/DA-AIM.
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