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Dynamic Network Quantization for Efficient Video Inference

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Deep convolutional networks have recently achieved great success in video recognition, yet their practical realization remains a challenge due to the large amount of computational resources required to achieve robust recognition. Motivated by the effectiveness of quantization for boosting efficiency, in this paper, we propose a dynamic network quantization framework, that selects optimal precision for each frame conditioned on the input for efficient video recognition. Specifically, given a video clip, we train a very lightweight network in parallel with the recognition network, to produce a dynamic policy indicating which numerical precision to be used per frame in recognizing videos. We train both networks effectively using standard backpropagation with a loss to achieve both competitive performance and resource efficiency required for video recognition. Extensive experiments on four challenging diverse benchmark datasets demonstrate that our proposed approach provides significant savings in computation and memory usage while outperforming the existing state-of-the-art methods.

Ximeng Sun, Rameswar Panda, Chun-Fu Chen, Aude Oliva, Rogerio Feris, Kate Saenko• 2021

Related benchmarks

TaskDatasetResultRank
Fine-grained Video CategorizationActivityNet v1.3 (val)
mAP74.8
32
Video RecognitionFCVID (test)
mAP82.7
28
Action RecognitionActivityNet v1.3 (test)
mAP74.8
19
Video RecognitionKinetics Mini
Top-1 Acc72.3
18
Video RecognitionMini-Kinetics (test)
Accuracy72.3
17
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