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EqNIO: Subequivariant Neural Inertial Odometry

Jayanth, Royina Karegoudra, Xu, Yinshuang, Wang, Ziyun, Chatzipantazis, Evangelos, Gehrig, Daniel, Daniilidis, Kostas

arXiv.org Artificial Intelligence

Neural networks are seeing rapid adoption in purely inertial odometry, where accelerometer and gyroscope measurements from commodity inertial measurement units (IMU) are used to regress displacements and associated uncertainties. They can learn informative displacement priors, which can be directly fused with the raw data with off-the-shelf non-linear filters. Nevertheless, these networks do not consider the physical roto-reflective symmetries inherent in IMU data, leading to the need to memorize the same priors for every possible motion direction, which hinders generalization. In this work, we characterize these symmetries and show that the IMU data and the resulting displacement and covariance transform equivariantly, when rotated around the gravity vector and reflected with respect to arbitrary planes parallel to gravity. We design a neural network that respects these symmetries by design through equivariant processing in three steps: First, it estimates an equivariant gravity-aligned frame from equivariant vectors and invariant scalars derived from IMU data, leveraging expressive linear and non-linear layers tailored to commute with the underlying symmetry transformation. We then map the IMU data into this frame, thereby achieving an invariant canonicalization that can be directly used with off-the-shelf inertial odometry networks. Finally, we map these network outputs back into the original frame, thereby obtaining equivariant covariances and displacements. We demonstrate the generality of our framework by applying it to the filter-based approach based on TLIO, and the end-to-end RONIN architecture, and show better performance on the TLIO, Aria, RIDI and OxIOD datasets than existing methods.


Zero-shot Object-Level OOD Detection with Context-Aware Inpainting

Nguyen, Quang-Huy, Zhou, Jin Peng, Liu, Zhenzhen, Bui, Khanh-Huyen, Weinberger, Kilian Q., Le, Dung D.

arXiv.org Artificial Intelligence

Machine learning algorithms are increasingly provided as black-box cloud services or pre-trained models, without access to their training data. This motivates the problem of zero-shot out-of-distribution (OOD) detection. Concretely, we aim to detect OOD objects that do not belong to the classifier's label set but are erroneously classified as in-distribution (ID) objects. Our approach, RONIN, uses an off-the-shelf diffusion model to replace detected objects with inpainting. RONIN conditions the inpainting process with the predicted ID label, drawing the input object closer to the in-distribution domain. As a result, the reconstructed object is very close to the original in the ID cases and far in the OOD cases, allowing RONIN to effectively distinguish ID and OOD samples. Throughout extensive experiments, we demonstrate that RONIN achieves competitive results compared to previous approaches across several datasets, both in zero-shot and non-zero-shot settings.


PEOPLEx: PEdestrian Opportunistic Positioning LEveraging IMU, UWB, BLE and WiFi

Lajoie, Pierre-Yves, Baghi, Bobak Hamed, Herath, Sachini, Hogan, Francois, Liu, Xue, Dudek, Gregory

arXiv.org Artificial Intelligence

This paper advances the field of pedestrian localization by introducing a unifying framework for opportunistic positioning based on nonlinear factor graph optimization. While many existing approaches assume constant availability of one or multiple sensing signals, our methodology employs IMU-based pedestrian inertial navigation as the backbone for sensor fusion, opportunistically integrating Ultra-Wideband (UWB), Bluetooth Low Energy (BLE), and WiFi signals when they are available in the environment. The proposed PEOPLEx framework is designed to incorporate sensing data as it becomes available, operating without any prior knowledge about the environment (e.g. anchor locations, radio frequency maps, etc.). Our contributions are twofold: 1) we introduce an opportunistic multi-sensor and real-time pedestrian positioning framework fusing the available sensor measurements; 2) we develop novel factors for adaptive scaling and coarse loop closures, significantly improving the precision of indoor positioning. Experimental validation confirms that our approach achieves accurate localization estimates in real indoor scenarios using commercial smartphones.


'Rise of the Ronin' is a historical action RPG from the team behind 'Nioh'

Engadget

The studio behind Nioh plans to take PlayStation fans on an adventure through Bakumatsu-era Japan. On Tuesday, Team Ninja -- not to be confused with Ninja Theory -- announced it is working on a new action-adventure game titled Rise of the Ronin. Set in 1863, about a decade after Commodore Matthew Perry ended Japan's isolation from the West, the game grounds the player in an era of dramatic technological and political change. You'll play as a wandering Ronin navigating a fractured country. This being a Team Ninja project, expect stylish third-person melee combat.