Self-Adaptive Feature Transformation Networks for Object Detection in low luminance Images

Shih-Chia Huang, Q. Hoang, Da-Wei Jaw
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引用次数: 3

Abstract

Despite the recent improvement of object detection techniques, many of them fail to detect objects in low-luminance images. The blurry and dimmed nature of low-luminance images results in the extraction of vague features and failure to detect objects. In addition, many existing object detection methods are based on models trained on both sufficient- and low-luminance images, which also negatively affect the feature extraction process and detection results. In this article, we propose a framework called Self-adaptive Feature Transformation Network (SFT-Net) to effectively detect objects in low-luminance conditions. The proposed SFT-Net consists of the following three modules: (1) feature transformation module, (2) self-adaptive module, and (3) object detection module. The purpose of the feature transformation module is to enhance the extracted feature through unsupervisely learning a feature domain projection procedure. The self-adaptive module is utilized as a probabilistic module producing appropriate features either from the transformed or the original features to further boost the performance and generalization ability of the proposed framework. Finally, the object detection module is designed to accurately detect objects in both low- and sufficient- luminance images by using the appropriate features produced by the self-adaptive module. The experimental results demonstrate that the proposed SFT-Net framework significantly outperforms the state-of-the-art object detection techniques, achieving an average precision (AP) of up to 6.35 and 11.89 higher on the sufficient- and low- luminance domain, respectively.
基于自适应特征变换网络的低亮度图像目标检测
尽管近年来目标检测技术有所改进,但许多检测方法无法检测到低亮度图像中的目标。低亮度图像的模糊和暗淡特性导致了模糊特征的提取和目标检测的失败。此外,现有的许多目标检测方法都是基于在充分亮度和低亮度图像上训练的模型,这也对特征提取过程和检测结果产生了负面影响。在本文中,我们提出了一种名为自适应特征变换网络(SFT-Net)的框架来有效地检测低亮度条件下的目标。本文提出的SFT-Net由以下三个模块组成:(1)特征变换模块,(2)自适应模块,(3)目标检测模块。特征变换模块的目的是通过无监督学习特征域投影过程来增强提取的特征。利用自适应模块作为概率模块,从变换后的特征或原始特征中产生适当的特征,进一步提高了框架的性能和泛化能力。最后,设计目标检测模块,利用自适应模块产生的适当特征,准确检测低亮度和足亮度图像中的目标。实验结果表明,所提出的SFT-Net框架显著优于目前最先进的目标检测技术,在足亮度域和低亮度域的平均精度(AP)分别高达6.35和11.89。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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