2024
DOI: 10.3390/electronics13050885
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S2S-Sim: A Benchmark Dataset for Ship Cooperative 3D Object Detection

Wenbin Yang,
Xinzhi Wang,
Xiangfeng Luo
et al.

Abstract: The rapid development of vehicle cooperative 3D object-detection technology has significantly improved the perception capabilities of autonomous driving systems. However, ship cooperative perception technology has received limited research attention compared to autonomous driving, primarily due to the lack of appropriate ship cooperative perception datasets. To address this gap, this paper proposes S2S-sim, a novel ship cooperative perception dataset. Ship navigation scenarios were constructed using Unity3D, a… Show more

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Cited by 3 publications
(9 citation statements)
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“…In this section, we introduce how to apply the vector quantization to the low-rank convolution kernels U (3) , G, and U (4) .…”
Section: Vector Quantizationmentioning
confidence: 99%
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“…In this section, we introduce how to apply the vector quantization to the low-rank convolution kernels U (3) , G, and U (4) .…”
Section: Vector Quantizationmentioning
confidence: 99%
“…The overall framework of QLTD Input: weights W ∈ R d×d×C in ×C out , the channel compression ratio of the Tucker decomposition r, the length of subvectors in vector quantization clustering d, the number of cluster centroids k, and the self-attention percentage s. 4) and B G , the initial weight of the self-attention module S U (3) , S U (4) and S G . 1: Obtain U (3) , G and U (4) by applying Tucker-2 decomposition to W ∈ R d×d×C in ×C out as Equation ( 4). 2: Split U (3) to sub-vectors by Ĉin = C in /d as Equation (6).…”
Section: Algorithmmentioning
confidence: 99%
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