We present a diverse dataset of industrial metal objects. These objects are symmetric, textureless and highly reflective, leading to challenging conditions not captured in existing datasets. Our dataset contains both real-world and synthetic multi-view RGB images with 6D object pose labels. Real-world data is obtained by recording multi-view images of scenes with varying object shapes, materials, carriers, compositions and lighting conditions. This results in over 30,000 images, accurately labelled using a new public tool. Synthetic data is obtained by carefully simulating real-world conditions and varying them in a controlled and realistic way. This leads to over 500,000 synthetic images. The close correspondence between synthetic and real-world data, and controlled variations, will facilitate sim-to-real research. Our dataset's size and challenging nature will facilitate research on various computer vision tasks involving reflective materials. The dataset and accompanying resources are made available on the project website at https://pderoovere.github.io/dimo.
翻译:我们展示了各种工业金属物体的数据集。这些物体具有对称性、无纹理和高度反射性,导致在现有数据集中无法捕捉到的具有挑战性的条件。我们的数据集包含真实世界和合成的多视图RGB图像,带有6D天体构成标签。通过记录不同天体形状、材料、载体、构成和照明条件的多视图图像,我们获得了真实世界数据。这导致30,000多张图像,使用新的公共工具贴上了准确标签。合成数据是通过仔细模拟真实世界条件,并以有控制和现实的方式加以改变的。这导致50万多张合成图像。合成世界数据与真实世界数据之间的密切对应,以及受控制的变异将便利于模拟到真实的研究。我们的数据集大小和具有挑战性,将便利于对各种涉及反射材料的计算机视觉任务的研究。数据集和配套资源将在https://pderoovere.github.io/dimo项目网站上提供。