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Evaluation of Prediction of Quality Metrics for IR Images for UAV Applications

机译:无人机红外图像质量指标预测评价

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This study presents a framework to predict, in a No Reference (NR) manner, Full Reference (FR) objective quality metrics. The methods are applied to infrared (IR) images acquired by Unmanned Aerial Vehicle (UAV) and compressed on-board and then streamed to a ground computer. The proposed method computes two kinds of features, namely Bitstream Based (BB) features which are estimated from the H.264 bitstream and Pixel Based (PB) features which are estimated from the decoded images. Two BB features are computed using the H.264 Quantization Parameter (QP) and estimated PSNR [1]. A total of 53 PB features are calculated based on spatial information and the rest of the features are based on NR quality assessment methods [1, 2, 3]. The most relevant ones are selected and nally mapped to predict FR objective scores using Support Vector Regression. For the performance evaluation, the proposed method is trained to predict scores of 6 FR image quality metrics (SSIM, NQM, MSSIM, FSIM, MAD and PSNR-HMA) using a set of 250 IR aerial images compressed at 4 levels with H.264/AVC as I-frames. For the SVR mapping, 80% of the contents are used for training (200 contents or 800 images) and the remaining 200 images (20%) for testing. We have evaluated our model for three cases; all features, only BB features and finally excluding BB features. The average SROCC values obtained are 0.970, 0.962 and 0.943, respectively. The BB only version achieves very close results to that of using all features. Thus the presented NR BB Image Quality Assessment (IQA) method for the considered IR image material is very ecient. We have compared our method with three NR methods [1, 2, 3]. The proposed method is competitive compared to the state-of-the-art NR algorithms.
机译:本研究提出了一种预测,以不参考(NR)方式,完整参考(FR)客观质量指标。该方法应用于由无人机(UAV)获取的红外(IR)图像和压缩在板上,然后将其流式传输到地面计算机。该方法计算了两种特征,即基于比特流(BB)特征,其从H.264比特流和基于像素的(PB)特征估计,其被从解码图像估计。使用H.264量化参数(QP)和估计的PSNR [1]计算两个BB功能。基于空间信息计算总共53个PB功能,其余特征基于NR质量评估方法[1,2,3]。选择最相关的是使用支持向量回归预测以预测FR目标分数。对于性能评估,培训该方法的培训,以预测使用在4个级别压缩的250个IR空中图像,以H.264压缩的一组250红外空中图像来预测6 FR图像质量指标(SSIM,NQM,MSSIM,FSIM,MAD和PSNR-HMA)的分数/ avc作为i帧。对于SVR映射,80%的内容用于培训(200个内容或800张图像)和剩余的200图像(20%)进行测试。我们已经评估了三种情况的模型;所有功能,只有BB功能,最终排除BB功能。获得的平均SROCC值分别为0.970,0.962和0.943。 BB仅达到使用所有功能的效果非常接近。因此,所考虑的IR图像材料的所呈现的NR BB图像质量评估(IQA)方法非常好。我们已经将我们的方法与三个NR方法进行了比较[1,2,3]。与最先进的NR算法相比,该方法具有竞争力。

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