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5 months ago

Syntactically Guided Generative Embeddings for Zero-Shot Skeleton Action Recognition

Gupta Pranay ; Sharma Divyanshu ; Sarvadevabhatla Ravi Kiran

Syntactically Guided Generative Embeddings for Zero-Shot Skeleton Action
  Recognition

Abstract

We introduce SynSE, a novel syntactically guided generative approach forZero-Shot Learning (ZSL). Our end-to-end approach learns progressively refinedgenerative embedding spaces constrained within and across the involvedmodalities (visual, language). The inter-modal constraints are defined betweenaction sequence embedding and embeddings of Parts of Speech (PoS) tagged wordsin the corresponding action description. We deploy SynSE for the task ofskeleton-based action sequence recognition. Our design choices enable SynSE togeneralize compositionally, i.e., recognize sequences whose action descriptionscontain words not encountered during training. We also extend our approach tothe more challenging Generalized Zero-Shot Learning (GZSL) problem via aconfidence-based gating mechanism. We are the first to present zero-shotskeleton action recognition results on the large-scale NTU-60 and NTU-120skeleton action datasets with multiple splits. Our results demonstrate SynSE'sstate of the art performance in both ZSL and GZSL settings compared to strongbaselines on the NTU-60 and NTU-120 datasets. The code and pretrained modelsare available at https://github.com/skelemoa/synse-zsl

Code Repositories

skelemoa/synse-zsl
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
generalized-zero-shot-skeletal-actionSynSE
Harmonic Mean (12 unseen classes): 36.33
Harmonic Mean (5 unseen classes): 59.02
generalized-zero-shot-skeletal-action-1SynSE
Harmonic Mean (10 unseen classes): 54.94
Harmonic Mean (24 unseen classes): 41.04
zero-shot-skeletal-action-recognition-on-ntuSynSE
Accuracy (12 unseen classes): 33.30
Accuracy (5 unseen classes): 75.81
Random Split Accuracy: 64.19
zero-shot-skeletal-action-recognition-on-ntu-1SynSE
Accuracy (10 unseen classes): 62.69
Accuracy (24 unseen classes): 38.70
zero-shot-skeletal-action-recognition-on-pkuSynSE
Random Split Accuracy: 53.85

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Syntactically Guided Generative Embeddings for Zero-Shot Skeleton Action Recognition | Papers | HyperAI