PNANet: Probabilistic Two-Stage Detector Using Pyramid Non-Local Attention

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5 Citations (Scopus)

Abstract

Object detection algorithms require compact structures, reasonable probability interpretability, and strong detection ability for small targets. However, mainstream second-order object detectors lack reasonable probability interpretability, have structural redundancy, and cannot fully utilize information from each branch of the first stage. Non-local attention can improve sensitivity to small targets, but most of them are limited to a single scale. To address these issues, we propose PNANet, a two-stage object detector with a probability interpretable framework. We propose a robust proposal generator as the first stage of the network and use cascade RCNN as the second stage. We also propose a pyramid non-local attention module that breaks the scale constraint and improves overall performance, especially in small target detection. Our algorithm can be used for instance segmentation after adding a simple segmentation head. Testing on COCO and Pascal VOC datasets as well as practical applications demonstrated good results in both object detection and instance segmentation tasks.

Original languageEnglish
Article number4938
JournalSensors
Volume23
Issue number10
DOIs
Publication statusPublished - May 2023

Keywords

  • object detection
  • probabilistic two-stage detector
  • pyramid non-local attention
  • robust proposal generator

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