Human Activity Recognition in an Open World
Derek S. Prijatelj (1), Samuel Grieggs (1), Jin Huang (1), Dawei Du, (2), Ameya Shringi (2), Christopher Funk (2), Adam Kaufman (3), Eric, Robertson (3), Walter J. Scheirer (1) ((1) University of Notre Dame, (2), Kitware, (3) PAR Government)

TL;DR
This paper addresses the challenge of recognizing human activities in open-world scenarios by formalizing novelty, proposing a new benchmark, analyzing current models, and providing tools for reproducible research.
Contribution
It introduces a formal definition of novelty in HAR, a new incremental open world learning protocol, and a benchmark dataset, along with a reproducible pipeline for future research.
Findings
Current HAR models struggle with novelty in open-world settings.
The KOWL-718 benchmark reveals limitations of existing models.
The proposed pipeline facilitates reproducible and extendable research.
Abstract
Managing novelty in perception-based human activity recognition (HAR) is critical in realistic settings to improve task performance over time and ensure solution generalization outside of prior seen samples. Novelty manifests in HAR as unseen samples, activities, objects, environments, and sensor changes, among other ways. Novelty may be task-relevant, such as a new class or new features, or task-irrelevant resulting in nuisance novelty, such as never before seen noise, blur, or distorted video recordings. To perform HAR optimally, algorithmic solutions must be tolerant to nuisance novelty, and learn over time in the face of novelty. This paper 1) formalizes the definition of novelty in HAR building upon the prior definition of novelty in classification tasks, 2) proposes an incremental open world learning (OWL) protocol and applies it to the Kinetics datasets to generate a new…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Anomaly Detection Techniques and Applications · Human Pose and Action Recognition
