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Seq-DeepIPC: Sequential Sensing for End-to-End Control in Legged Robot Navigation

About

We present Seq-DeepIPC, a sequential end-to-end perception-to-control model for legged robot navigation in real-world environments. Seq-DeepIPC advances intelligent sensing for autonomous legged navigation by tightly integrating multi-modal perception (RGB-D + GNSS) with temporal fusion and control. The model jointly predicts semantic segmentation and depth estimation, giving richer spatial features for planning and control. For efficient deployment on edge devices, we use a lightweight model as the encoder, reducing computation while maintaining accuracy. Heading estimation is simplified by removing the noisy IMU and instead deriving global heading via differential analysis of sequential GNSS coordinates. We collected a larger and more diverse dataset that includes both road and grass terrains, and validated Seq-DeepIPC on a robot dog. Comparative and ablation studies show that sequential inputs improve perception and control in our models, while other baselines do not benefit. Seq-DeepIPC achieves competitive or better results with reasonable model size; although GNSS-only heading is less reliable near tall buildings, it is robust in open areas. Overall, Seq-DeepIPC extends end-to-end navigation beyond wheeled robots to more versatile and temporally-aware systems. To support future research, we will release the codes to our GitHub repo at https://github.com/oskarnatan/Seq-DeepIPC.

Oskar Natan, Jun Miura• 2025

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCampus Navigation Offline (test)
mIoU84.4
12
Robot ControlCampus Navigation Offline (test)
Control MAE0.046
9
Waypoint predictionCampus Navigation Offline (test)
MAE0.725
9
Depth EstimationCampus Navigation Offline (test)
MAE (Depth)0.084
6
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