Initial Findings on Sensor based Open Vocabulary Activity Recognition via Text Embedding Inversion
Conventional human activity recognition (HAR) relies on classifiers trained to predict discrete activity classes, inherently limiting recognition to activities explicitly present in the training set. Such classifiers would invariably fail, putting zero likelihood, when encountering unseen activities...
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Zusammenfassung: | Conventional human activity recognition (HAR) relies on classifiers trained
to predict discrete activity classes, inherently limiting recognition to
activities explicitly present in the training set. Such classifiers would
invariably fail, putting zero likelihood, when encountering unseen activities.
We propose Open Vocabulary HAR (OV-HAR), a framework that overcomes this
limitation by first converting each activity into natural language and breaking
it into a sequence of elementary motions. This descriptive text is then encoded
into a fixed-size embedding. The model is trained to regress this embedding,
which is subsequently decoded back into natural language using a pre-trained
embedding inversion model. Unlike other works that rely on auto-regressive
large language models (LLMs) at their core, OV-HAR achieves open vocabulary
recognition without the computational overhead of such models. The generated
text can be transformed into a single activity class using LLM prompt
engineering. We have evaluated our approach on different modalities, including
vision (pose), IMU, and pressure sensors, demonstrating robust generalization
across unseen activities and modalities, offering a fundamentally different
paradigm from contemporary classifiers. |
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DOI: | 10.48550/arxiv.2501.07408 |