Physics Maths Engineering
author list
Peer Reviewed
Abstract This article presents a fast parallel lossless technique and a lossy image compression technique for 16-bit single-channel images. Nowadays, such techniques are “a must” in robotics and other areas where several depth cameras are used. Since many of these algorithms need to be run in low-profile hardware, as embedded systems, they should be very fast and customizable. The proposal is based on the consideration of depth images as surfaces, so the idea is to split the image into a set of polynomial functions that each describes a part of the surface. The developed algorithm herein proposed can achieve a similar—or better—compression rate and especially higher speed rates than the existing techniques. It also has the potential of being fully parallelizable and to run on several cores. This feature, compared to other approaches, makes it useful for handling and streaming multiple cameras simultaneously. The algorithm is assessed in different situations and hardware. Its implementation is rather simple and is carried out with LIDAR captured images. Therefore, this work is accompanied by an open implementation in C++.
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Show by month | Manuscript | Video Summary |
---|---|---|
2024 December | 41 | 41 |
2024 November | 57 | 57 |
2024 October | 56 | 56 |
2024 September | 41 | 41 |
2024 August | 42 | 42 |
2024 July | 30 | 30 |
2024 June | 25 | 25 |
2024 May | 32 | 32 |
2024 April | 46 | 46 |
2024 March | 13 | 13 |
Total | 383 | 383 |