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Jointly Optimizing 3D Model Fitting and Fine-Grained Classification

机译:共同优化3D模型拟合和细粒度分类

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摘要

3D object modeling and fine-grained classification are often treated as separate tasks. We propose to optimize 3D model fitting and fine-grained classification jointly. Detailed 3D object representations encode more information (e.g., precise part locations and viewpoint) than traditional 2D-based approaches, and can therefore improve fine-grained classification performance. Meanwhile, the predicted class label can also improve 3D model fitting accuracy, e.g., by providing more detailed class-specific shape models. We evaluate our method on a new fine-grained 3D car dataset (FG3DCar), demonstrating our method outperforms several state-of-the-art approaches. Furthermore, we also conduct a series of analyses to explore the dependence between fine-grained classification performance and 3D models.
机译:3D对象建模和细粒度分类通常被视为单独的任务。我们建议共同优化3D模型拟合和细分类。与传统的基于2D的方法相比,详细的3D对象表示可以编码更多的信息(例如,精确的零件位置和视点),因此可以改善细粒度的分类性能。同时,预测的类别标签还可以例如通过提供更详细的特定于类别的形状模型来提高3D模型拟合精度。我们在新的细粒度3D汽车数据集(FG3DCar)上评估了我们的方法,证明了我们的方法优于几种最先进的方法。此外,我们还进行了一系列分析,以探索细粒度分类性能与3D模型之间的依存关系。

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