论文标题
家庭垃圾图像识别的新基准
New Benchmark for Household Garbage Image Recognition
论文作者
论文摘要
家用垃圾图像通常面临复杂的背景,可变的照明,不同的角度和可变形状,这给垃圾图像分类带来了很大的困难。由于能够发现特定问题的特征,深度学习,尤其是卷积神经网络(CNN)已成功地用于图像表示学习。但是,可用且稳定的家庭垃圾数据集不足,这严重限制了研究和应用的发展。此外,垃圾图像分类领域的最新状态并不完全清楚。为了解决这个问题,在这项研究中,我们通过模拟不同的照明,背景,角度和形状来构建了一个新的开放基准数据集,用于家庭垃圾图像分类。该数据集被命名为30类的家庭垃圾图像(HGI-30),其中包含18,000张30个家庭垃圾类别的图像。公开可用的HGI-30数据集使研究人员可以为家庭垃圾识别开发准确,健壮的方法。我们还对HGI-30上最新的Deep CNN方法进行了实验和性能分析,该方法是基线基线的结果。
Household garbage images are usually faced with complex backgrounds, variable illuminations, diverse angles, and changeable shapes, which bring a great difficulty in garbage image classification. Due to the ability to discover problem-specific features, deep learning and especially convolutional neural networks (CNNs) have been successfully and widely used for image representation learning. However, available and stable household garbage datasets are insufficient, which seriously limits the development of research and application. Besides, the state of the art in the field of garbage image classification is not entirely clear. To solve this problem, in this study, we built a new open benchmark dataset for household garbage image classification by simulating different lightings, backgrounds, angles, and shapes. This dataset is named 30 Classes of Household Garbage Images (HGI-30), which contains 18,000 images of 30 household garbage classes. The publicly available HGI-30 dataset allows researchers to develop accurate and robust methods for household garbage recognition. We also conducted experiments and performance analysis of the state-of-the-art deep CNN methods on HGI-30, which serves as baseline results on this benchmark.