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Autonomous Driving Data Availability Favors Intermediate Detectors

For autonomous driving, machine learning can be used to detect cars and pedestrians, and labeled car or pedestrian image data is relatively easy to obtain. By contrast, a pure end-to-end approach would require a large dataset of image and steering-direction pairs that is time-consuming and expensive to collect, making it difficult to train. This data availability supports considering intermediate car and pedestrian detectors in a multi-stage, non-end-to-end pipeline.

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Updated 2026-05-26

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