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ParCon: Noise-Robust Collaborative Perception via Multi-module Parallel Connection

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In this paper, we investigate improving the perception performance of autonomous vehicles through communication with other vehicles and road infrastructures. To this end, we introduce a novel collaborative perception architecture, called ParCon, which connects multiple modules in parallel, as opposed to the sequential connections used in most other collaborative perception methods. Through extensive experiments, we demonstrate that ParCon inherits the advantages of parallel connection. Specifically, ParCon is robust to noise, as the parallel architecture allows each module to manage noise independently and complement the limitations of other modules. As a result, ParCon achieves state-of-the-art accuracy, particularly in noisy environments, such as real-world datasets, increasing detection accuracy by 6.91%. Additionally, ParCon is computationally efficient, reducing floating-point operations (FLOPs) by 11.46%.

Hyunchul Bae, Minhee Kang, Heejin Ahn• 2024

Related benchmarks

TaskDatasetResultRank
Cooperative 3D Object DetectionV2X-Real (EGO+AUX1)
E2E mAP@0.554.3
16
Object DetectionV2X-Real EGO+AUX2 unseen adaptation 1.0 (test)
E2E mAP@0.546.7
16
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