Abstract

In this paper, we propose a method of generating a color image from light detection and ranging (LiDAR) 3D reflection intensity. The proposed method is composed of two steps: projection of LiDAR 3D reflection intensity into 2D intensity, and color image generation from the projected intensity by using a fully convolutional network (FCN). The color image should be generated from a very sparse projected intensity image. For this reason, the FCN is designed to have an asymmetric network structure, i.e., the layer depth of the decoder in the FCN is deeper than that of the encoder. The well-known KITTI dataset for various scenarios is used for the proposed FCN training and performance evaluation. Performance of the asymmetric network structures are empirically analyzed for various depth combinations for the encoder and decoder. Through simulations, it is shown that the proposed method generates fairly good visual quality of images while maintaining almost the same color as the ground truth image. Moreover, the proposed FCN has much higher performance than conventional interpolation methods and generative adversarial network based Pix2Pix. One interesting result is that the proposed FCN produces shadow-free and daylight color images. This result is caused by the fact that the LiDAR sensor data is produced by the light reflection and is, therefore, not affected by sunlight and shadow.

Highlights

  • Light detection and ranging (LiDAR) sensors are widely used for measuring the distances to objects and their reflection information

  • We evaluate the performance of the proposed color image generation with varying depths of the encoder and decoder networks

  • We propose a color image-generation method from LiDAR 3D reflection intensity

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Summary

Introduction

Light detection and ranging (LiDAR) sensors are widely used for measuring the distances to objects and their reflection information. Because the LiDAR 3D point-cloud data, namely the range (or distance) and reflection, is independent of sunlight and shadows, the same data can be obtained whether it is day or night [1,2,3,4,5,6,7]. This environmental consistency of LiDAR data has a great advantage over conventional camera images for autonomous vehicle application because the quality of camera images is highly dependent on illumination [8]

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