Pseudo-LiDAR based 3D object detectors have gained popularity due to their high accuracy. However, these methods need dense depth supervision and suffer from inferior speed. To solve these two issues, a recently introduced RTS3D builds an efficient 4D Feature-Consistency Embedding (FCE) space for the intermediate representation of object without depth supervision. FCE space splits the entire object region into 3D uniform grid latent space for feature sampling point generation, which ignores the importance of different object regions. However, we argue that, compared with the inner region, the outer region plays a more important role for accurate 3D detection. To encode more information from the outer region, we propose a shape prior non-uniform sampling strategy that performs dense sampling in outer region and sparse sampling in inner region. As a result, more points are sampled from the outer region and more useful features are extracted for 3D detection. Further, to enhance the feature discrimination of each sampling point, we propose a high-level semantic enhanced FCE module to exploit more contextual information and suppress noise better. Experiments on the KITTI dataset are performed to show the effectiveness of the proposed method. Compared with the baseline RTS3D, our proposed method has 2.57% improvement on AP3d almost without extra network parameters. Moreover, our proposed method outperforms the state-of-the-art methods without extra supervision at a real-time speed.
翻译:以 3D 为基础的 3D 3D 3D 对象探测器由于精度高而越来越受欢迎。 但是,这些方法需要密密的深度监督,而且速度低。为了解决这两个问题,最近推出的 RTS3D 建立了一个高效的 4D 地貌一致嵌入(FCE) 空间,用于中间显示物体,而没有深度监督。FCE 空间将整个目标区域分为3D 统一网格潜层,用于生成地貌取样点,这忽视了不同目标区域的重要性。然而,我们认为,与内区域相比,外部区域在准确的 3D 探测方面起着更为重要的作用。为了从外部区域编码更多的信息,我们最近推出的 RTSD,我们提出了一种在外区域进行密集采样和内部区域采样的先前非统一采样战略。结果是,从外部区域采集更多的点,为3D 采集更有用的特征。此外,为了加强每个采样点的特征区别,我们建议一个高层次的精度增强的FCEE模块,以利用更符合背景的信息,更好地抑制噪音。在外区域进行更多的实验。在 KITTIDDD 3 上进行实际的实验,在不使用我们的拟议基准 3 3 比较了我们的拟议的方法是额外的方法。