Litcius/Paper detail

Spatiotemporal Saliency Representation Learning for Video Action Recognition

Yongqiang Kong, Yunhong Wang, Annan Li

2021IEEE Transactions on Multimedia24 citationsDOI

Abstract

Deep convolutional neural networks (CNNs) have achieved great success in human action recognition, however they are still limited in understanding complex and noisy videos owing to the difficulties of exploiting appearance and motion information. Most existing works have been devoted to designing CNN architectures, which overlook the quality of network inputs that is of great importance. This paper provides an alternative solution of action recognition improvement by focusing on the quality of network inputs. A multi-task video salient object detection approach with object-of-interest segmentation scheme, which takes into account both human and action-relevant cues, is proposed to immunize the input video from background clutter. Further, a simple spatiotemporal residual network architecture is presented, which operates on multiple high-quality inputs for long-term action representation learning. Empirical evaluations on various challenging datasets demonstrate that the proposed framework can perform competitively against state-of-the-art. Besides better performance, learning representations of saliency can help prevent the action recognition model from overfitting and speed up the convergence of training.

Topics & Concepts

Computer scienceArtificial intelligenceOverfittingConvolutional neural networkMachine learningAction recognitionSegmentationRepresentation (politics)Feature learningAction (physics)Deep learningClutterTask (project management)Pattern recognition (psychology)Artificial neural networkRadarEconomicsLawPoliticsManagementPolitical scienceClass (philosophy)Quantum mechanicsPhysicsTelecommunicationsHuman Pose and Action RecognitionAdvanced Neural Network ApplicationsMultimodal Machine Learning Applications