Quantum algorithm for visual tracking
Chao-Hua Yu, Fei Gao, Chenghuan Liu, Du Huynh, Mark Reynolds, and, Jingbo Wang

TL;DR
This paper introduces a quantum algorithm for visual tracking that leverages quantum computing to potentially achieve exponential speedup in training and detection phases, advancing the application of quantum methods in computer vision.
Contribution
First quantum algorithm for visual tracking, utilizing quantum ridge regression for efficient training and detection, with potential exponential speedup over classical methods.
Findings
Polylogarithmic scaling for low condition number matrices
Potential exponential speedup in training and detection phases
Significant speedup in object disappearance detection and motion matching
Abstract
Visual tracking (VT) is the process of locating a moving object of interest in a video. It is a fundamental problem in computer vision, with various applications in human-computer interaction, security and surveillance, robot perception, traffic control, etc. In this paper, we address this problem for the first time in the quantum setting, and present a quantum algorithm for VT based on the framework proposed by Henriques et al. [IEEE Trans. Pattern Anal. Mach. Intell., 7, 583 (2015)]. Our algorithm comprises two phases: training and detection. In the training phase, in order to discriminate the object and background, the algorithm trains a ridge regression classifier in the quantum state form where the optimal fitting parameters of ridge regression are encoded in the amplitudes. In the detection phase, the classifier is then employed to generate a quantum state whose amplitudes encode…
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