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General-Purpose Deep Learning Detection and Segmentation Models for Images from a Lidar-Based Camera Sensor

Xianjia Yu, Sahar Salimpour, Jorge Peña Queralta, Tomi Westerlund

Year
2023
Citations
17
Access
Open access

Abstract

Over the last decade, robotic perception algorithms have significantly benefited from the rapid advances in deep learning (DL). Indeed, a significant amount of the autonomy stack of different commercial and research platforms relies on DL for situational awareness, especially vision sensors. This work explored the potential of general-purpose DL perception algorithms, specifically detection and segmentation neural networks, for processing image-like outputs of advanced lidar sensors. Rather than processing the three-dimensional point cloud data, this is, to the best of our knowledge, the first work to focus on low-resolution images with a 360° field of view obtained with lidar sensors by encoding either depth, reflectivity, or near-infrared light in the image pixels. We showed that with adequate preprocessing, general-purpose DL models can process these images, opening the door to their usage in environmental conditions where vision sensors present inherent limitations. We provided both a qualitative and quantitative analysis of the performance of a variety of neural network architectures. We believe that using DL models built for visual cameras offers significant advantages due to their much wider availability and maturity compared to point cloud-based perception.

Keywords

Artificial intelligenceComputer scienceLidarPoint cloudComputer visionDeep learningSegmentationFocus (optics)Artificial neural networkImage processing

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