JPEG image compression algorithm is a widely used technique for image size reduction in edge and cloud computing settings. However, applying such lossy compression on images processed by deep neural networks can lead to significant accuracy degradation. Inspired by the curriculum learning paradigm, we propose a training approach called curriculum pre-training (CPT) for crowd counting on compressed images, which alleviates the drop in accuracy resulting from lossy compression. We verify the effectiveness of our approach by extensive experiments on three crowd counting datasets, two crowd counting DNN models and various levels of compression. The proposed training method is not overly sensitive to hyper-parameters, and reduces the error, particularly for heavily compressed images, by up to 19.70%.
翻译:JPEG图像压缩算法是一种广泛使用的降低边缘和云计算设置图像大小的技术。 但是,在深神经网络处理的图像上应用这种损失压缩可能会导致严重精确度下降。 在课程学习范式的启发下,我们提议了一种培训方法,称为课程预训(CPT),以吸引人群来计算压缩图像,这减轻了压缩损失造成的准确性下降。我们通过对三个人群计数数据集、两个人群计数 DNN 模型和不同程度的压缩进行广泛实验来验证我们的方法的有效性。 拟议的培训方法对超参数不过分敏感,并将错误,特别是严重压缩图像的错误减少19.70%。