Incremental Object Detection Method Based on Border Distance Measurement

Incremental learning has achieved good results in image classification, but it is challenging to apply incremental learning to multi-class object detection.Object detection is more complex than image classification, which combines classification and border regression.At present, the most advanced in...

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Published inJi suan ji ke xue Vol. 49; no. 8; pp. 136 - 142
Main Authors Liu, Dong-mei, Xu, Yang, Wu, Ze-bin, Liu, Qian, Song, Bin, Wei, Zhi-hui
Format Journal Article
LanguageChinese
Published Chongqing Guojia Kexue Jishu Bu 01.08.2022
Editorial office of Computer Science
Subjects
Online AccessGet full text
ISSN1002-137X
DOI10.11896/jsjkx.220100132

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Abstract Incremental learning has achieved good results in image classification, but it is challenging to apply incremental learning to multi-class object detection.Object detection is more complex than image classification, which combines classification and border regression.At present, the most advanced incremental object detectors adopt the external fixed region suggestion method based on knowledge distillation, which consumes a lot of time and cost.For single-stage detectors, due to the lack of annotation and region advice information for the old class, old objects are usually identified by the detector as the background, resulting in catastrophic forgetting.In this paper, a label selection algorithm based on border distance metric is proposed.It uses the detection results of the old model and the existing dataset labels to select and merge by measuring the coincidence of the bounding boxes, making up for the lack of annotations of the old objects in the new dataset and alleviating catastrophic forgetting.In addit
AbstractList Incremental learning has achieved good results in image classification,but it is challenging to apply incremental learning to multi-class object detection.Object detection is more complex than image classification,which combines classification and border regression.At present,the most advanced incremental object detectors adopt the external fixed region suggestion method based on knowledge distillation,which consumes a lot of time and cost.For single-stage detectors,due to the lack of annotation and region advice information for the old class,old objects are usually identified by the detector as the background,resulting in catastrophic forgetting.In this paper,a label selection algorithm based on border distance metric is proposed.It uses the detection results of the old model and the existing dataset labels to select and merge by measuring the coincidence of the bounding boxes,making up for the lack of annotations of the old objects in the new dataset and alleviating catastrophic forgetting.In addition,a mod
Incremental learning has achieved good results in image classification, but it is challenging to apply incremental learning to multi-class object detection.Object detection is more complex than image classification, which combines classification and border regression.At present, the most advanced incremental object detectors adopt the external fixed region suggestion method based on knowledge distillation, which consumes a lot of time and cost.For single-stage detectors, due to the lack of annotation and region advice information for the old class, old objects are usually identified by the detector as the background, resulting in catastrophic forgetting.In this paper, a label selection algorithm based on border distance metric is proposed.It uses the detection results of the old model and the existing dataset labels to select and merge by measuring the coincidence of the bounding boxes, making up for the lack of annotations of the old objects in the new dataset and alleviating catastrophic forgetting.In addit
Author Xu, Yang
Song, Bin
Wei, Zhi-hui
Liu, Dong-mei
Liu, Qian
Wu, Ze-bin
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Snippet Incremental learning has achieved good results in image classification, but it is challenging to apply incremental learning to multi-class object...
Incremental learning has achieved good results in image classification,but it is challenging to apply incremental learning to multi-class object...
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SubjectTerms Accuracy
Algorithms
Annotations
Datasets
Detectors
Distance measurement
Distillation
Feature extraction
Image classification
Labels
Learning
Model accuracy
Modules
object detection|label selection|incremental learning|attention module|catastrophic forgetting|pseudo label
Object recognition
Title Incremental Object Detection Method Based on Border Distance Measurement
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