Sequential Context Encoding for Duplicate Removal
Qi, Lu, Liu, Shu, Shi, Jianping, Jia, Jiaya
–Neural Information Processing Systems
Duplicate removal is a critical step to accomplish a reasonable amount of predictions in prevalent proposal-based object detection frameworks. In this work, we design a new two-stage framework to effectively select the appropriate proposal candidate for each object. The first stage suppresses most of easy negative object proposals, while the second stage selects true positives in the reduced proposal set. These two stages share the same network structure, an encoder and a decoder formed as recurrent neural networks (RNN) with global attention and context gate. The encoder scans proposal candidates in a sequential manner to capture the global context information, which is then fed to the decoder to extract optimal proposals.
Neural Information Processing Systems
Feb-14-2020, 09:41:45 GMT
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