We present a novel depth completion approach agnostic to the sparsity of depth points, that is very likely to vary in many practical applications. State-of-the-art approaches yield accurate results only when processing a specific density and distribution of input points, i.e. the one observed during training, narrowing their deployment in real use cases. On the contrary, our solution is robust to uneven distributions and extremely low densities never witnessed during training. Experimental results on standard indoor and outdoor benchmarks highlight the robustness of our framework, achieving accuracy comparable to state-of-the-art methods when tested with density and distribution equal to the training one while being much more accurate in the other cases. Our pretrained models and further material are available in our project page.
翻译:我们提出了一个新的深度完成方法,对深度点的广度不可知,这在许多实际应用中极有可能有所不同。只有在处理特定密度和输入点分布时,即培训期间观察到的输入点分布时,最先进的方法才会产生准确的结果,缩小实际使用案例的部署范围。相反,我们的解决办法对分布不均和培训期间从未看到过极低密度的分布十分有力。关于标准室内和户外基准的实验结果突出显示了我们框架的坚固性,在与培训同等的密度和分布测试时,达到与最新方法相近的准确性,而在其他情况下,我们的项目网页上提供了我们预先培训的模型和进一步的材料。