Discriminatively Learned Hierarchical Rank Pooling Networks
Basura Fernando, Stephen Gould

TL;DR
This paper introduces discriminative and hierarchical rank pooling methods for temporal video encoding, enabling end-to-end training of action recognition models that leverage CNN features for improved performance.
Contribution
The paper proposes novel discriminative and hierarchical rank pooling techniques that enhance temporal encoding for action recognition, allowing end-to-end training with CNNs without additional parameters.
Findings
Achieved 76.7% mAP on Hollywood2
Achieved 69.4% on HMDB51
Achieved 93.6% on UCF101
Abstract
In this work, we present novel temporal encoding methods for action and activity classification by extending the unsupervised rank pooling temporal encoding method in two ways. First, we present "discriminative rank pooling" in which the shared weights of our video representation and the parameters of the action classifiers are estimated jointly for a given training dataset of labelled vector sequences using a bilevel optimization formulation of the learning problem. When the frame level features vectors are obtained from a convolutional neural network (CNN), we rank pool the network activations and jointly estimate all parameters of the model, including CNN filters and fully-connected weights, in an end-to-end manner which we coined as "end-to-end trainable rank pooled CNN". Importantly, this model can make use of any existing convolutional neural network architecture (e.g., AlexNet or…
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Taxonomy
TopicsHuman Pose and Action Recognition · Anomaly Detection Techniques and Applications · Gait Recognition and Analysis
Methods1x1 Convolution · Convolution · Local Response Normalization · Grouped Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Dropout · Dense Connections · Max Pooling · Softmax · How do I speak to a person at Expedia?-/+/
