Self-Paced Learning Strategy with Easy Sample Prior Based on Confidence for the Flying Bird Object Detection Model Training
Zi-Wei Sun, Ze-Xi hua, Heng-Chao Li, Yan Li

TL;DR
This paper introduces a novel self-paced learning strategy with easy sample prior based on confidence for training the Flying Bird Object Detection model, improving detection accuracy by focusing on easier samples first.
Contribution
It proposes a new SPL strategy with easy sample prior and a confidence-based minimizer function tailored for one-class object detection, enhancing training effectiveness.
Findings
AP50 increased by 2.1% with the new strategy
SPL-ESP-BC outperforms other loss-based SPL strategies
Better learning of flying bird features from easy to hard samples
Abstract
In order to avoid the impact of hard samples on the training process of the Flying Bird Object Detection model (FBOD model, in our previous work, we designed the FBOD model according to the characteristics of flying bird objects in surveillance video), the Self-Paced Learning strategy with Easy Sample Prior Based on Confidence (SPL-ESP-BC), a new model training strategy, is proposed. Firstly, the loss-based Minimizer Function in Self-Paced Learning (SPL) is improved, and the confidence-based Minimizer Function is proposed, which makes it more suitable for one-class object detection tasks. Secondly, to give the model the ability to judge easy and hard samples at the early stage of training by using the SPL strategy, an SPL strategy with Easy Sample Prior (ESP) is proposed. The FBOD model is trained using the standard training strategy with easy samples first, then the SPL strategy with…
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Taxonomy
TopicsAnimal Vocal Communication and Behavior
MethodsSemi-Pseudo-Label · Pointwise Convolution · Dilated Convolution · Hierarchical Feature Fusion · Efficient Spatial Pyramid
