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Efficient Object Detection and Classification of Heat Emitting Objects from Infrared Images Based on Deep Learning

机译:基于深度学习的红外图像高效对象检测与散热物体的分类

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摘要

Object detection from infrared (IR) images recently attracted attention of researches. There are several techniques that can be performed on images in order to detect objects. Deep learning is an efficient technique among these techniques as it merges the feature extraction in the classification process. This paper presents a deep-learning-based approach that detects whether the image includes a certain object or not. In addition, it considers the scenario of object classification that has not been given attention in the literature for IR images. The importance of multi-object classification is to maintain the ability to discriminate between objects of interest and trivial or discarded objects in the IR images or image sequences of very poor contrast. The suggested deep learning model is based on Convolutional Neural Networks (CNNs). Two scenarios are included in this study. The first scenario is to detect a single object from an IR image. The second one is to detect multiple objects from IR images. Both scenarios have been studied and simulated at different Signal-to-Noise Ratios (SNR) on self-recoded as well as standard IR images. The proposed scenarios have been tested and validated by comparison with the traditional approach based on Histogram of Gradients (HoG) technique that is popularly considered for object detection. Moreover, a comparison with other state-of-the-art methods is presented. Simulation results reveal that the HoG approach may fail with IR images due to the low contrast of these images, while the proposed approach succeeds and achieves an accuracy level of 100 % in both studied scenarios.
机译:来自红外线(IR)图像的对象检测最近引起了研究的关注。有几种可以在图像上执行的技术,以便检测对象。深度学习是这些技术的有效技术,因为它在分类过程中合并了特征提取。本文提出了一种基于深度学习的方法,可以检测图像是否包括某个对象。此外,它还考虑了在IR图像的文献中未引起注意的对象分类的场景。多目标分类的重要性是为了保持区分感兴趣的对象和丢弃的IR图像中的差异或丢弃对象的能力,或者图像序列非常差的对比度。建议的深度学习模型基于卷积神经网络(CNNS)。这项研究包括两种情况。第一场景是从IR图像中检测单个对象。第二个是从IR图像中检测多个对象。在自我重新编码的和标准IR图像上以不同的信噪比(SNR)进行了研究和模拟了这两种情况。通过与基于梯度(HOG)技术的直方图的传统方法进行比较,已经测试和验证了所提出的场景,该方法普遍考虑对象检测。此外,呈现与其他最先进的方法的比较。仿真结果表明,由于这些图像的对比度低,HOG方法可能因IR图像而失败,而所提出的方法在研究中成功并且在研究中实现了100%的精度级别。

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