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Jointly Optimizing 3D Model Fitting and Fine-Grained Classification

机译:联合优化3D模型配件和细粒度分类

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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模型配件和细粒度分类。 详细的3D对象表示比传统的基于2D的方法编码更多信息(例如,精确的部件位置和视点),因此可以提高细粒度的分类性能。 同时,预测的类标签还可以通过提供更详细的类特定形状模型来提高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,我们还开展了一系列分析,以探讨细粒度分类性能和3D模型之间的依赖。

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