more flexible implementation of TOC
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title = "End-to-end Learning of Spatiotemporal Trajectories"
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date = 2026-02-02
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description = ""
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[extra]
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toc = true
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End-to-end learning means training a model to perform a task from input to output, supervising only on how the output aligns with the task's ground truth.
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> Schema overview of the three categories of end-to-end trajectory learning tasks.
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{{ toc() }}
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## Trajectory Prediction
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Recall in the [introduction post](@/dl4traj/introduction/index.md) that a complete trajectory usually records the movement of the target from the beginning to the end of the movement process.
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