The retrieval of 3D objects has gained significant importance in recent years due to its broad range of applications in computer vision, computer graphics, virtual reality, and augmented reality. However, the retrieval of 3D objects presents significant challenges due to the intricate nature of 3D models, which can vary in shape, size, and texture, and have numerous polygons and vertices. To this end, we introduce a novel SHREC challenge track that focuses on retrieving relevant 3D animal models from a dataset using sketch queries and expedites accessing 3D models through available sketches. Furthermore, a new dataset named ANIMAR was constructed in this study, comprising a collection of 711 unique 3D animal models and 140 corresponding sketch queries. Our contest requires participants to retrieve 3D models based on complex and detailed sketches. We receive satisfactory results from eight teams and 204 runs. Although further improvement is necessary, the proposed task has the potential to incentivize additional research in the domain of 3D object retrieval, potentially yielding benefits for a wide range of applications. We also provide insights into potential areas of future research, such as improving techniques for feature extraction and matching, and creating more diverse datasets to evaluate retrieval performance.
翻译:近年来,三维物体的检索因其在计算机视觉、计算机图形学、虚拟现实和增强现实等领域的广泛应用而变得越来越重要。然而,由于三维模型的复杂性,包括形状、大小、纹理的巨大变化以及众多的多边形和顶点等特征,三维物体的检索仍然具有相当大的挑战性。为此,我们引入了一种新的SHREC挑战跟踪,着重于使用草图查询从数据集中检索相关的三维动物模型,通过现有的草图加速访问三维模型。此外,本研究构建了一个名为ANIMAR的新数据集,包括711个独特的三维动物模型和140个对应的草图查询。我们的竞赛要求参与者基于复杂和详细的草图检索3D模型。我们从八个团队和204个运行中获得了令人满意的结果。虽然还需要进一步的改进,但该任务有潜力激励三维物体检索领域的额外研究,可能为广泛应用带来好处。我们还提供了关于未来研究的潜在领域的见解,如改进特征提取和匹配技术,创建更多样化的数据集以评估检索性能等。