Improving ProtoNet for Few-Shot Video Object Recognition: Winner of ORBIT Challenge 2022

1 Oct 2022  ·  Li Gu, Zhixiang Chi, Huan Liu, Yuanhao Yu, Yang Wang ·

In this work, we present the winning solution for ORBIT Few-Shot Video Object Recognition Challenge 2022. Built upon the ProtoNet baseline, the performance of our method is improved with three effective techniques. These techniques include the embedding adaptation, the uniform video clip sampler and the invalid frame detection. In addition, we re-factor and re-implement the official codebase to encourage modularity, compatibility and improved performance. Our implementation accelerates the data loading in both training and testing.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Few-Shot Image Classification ORBIT Clutter Video Evaluation ProtoNetsVideo Frame accuracy 71.69 # 1

Methods