ArXiv TLDR

Quantum Gradient-Based Approach for Edge and Corner Detection Using Sobel Kernels

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2605.00744

Mohammad Aamir Sohail, Gabriela Pinheiro, Yasemin Poyraz Kocak, Batuhan Hangun, Emre Camkerten + 2 more

cs.CV

TLDR

This paper presents a quantum gradient-based approach for edge and corner detection using Sobel kernels, comparing FRQI and QPIE encodings.

Key contributions

  • Proposes quantum Sobel edge and Harris corner detection.
  • Introduces a quantum gradient computation scheme.
  • Compares FRQI and QPIE image encodings, finding QPIE more stable.
  • Uses classical post-processing to refine quantum corner points.

Why it matters

This paper demonstrates a functional and scalable quantum realization of classical edge and corner detection. It's a foundational step for quantum image processing, showing consistency with classical methods and exploring encoding comparisons. While not an end-to-end speedup, it highlights quantum potential.

Original Abstract

Edge detection refers to identifying points in a digital image where intensity changes sharply, indicating object boundaries or structural features. Corners are locations where gray-level intensity changes abruptly in multiple directions and are widely used in feature extraction, object tracking, and 3D modeling. In this study, we present a quantum implementation of Sobel-based edge detection and Harris-style corner detection. Two quantum image encoding methods - Flexible Representation of Quantum Images (FRQI) and Quantum Probability Image Encoding (QPIE) - are used to encode the input data and are comparatively analyzed. The proposed approach introduces a quantum gradient computation scheme based on lag-2 differences, enabling the evaluation of gradient-like features in superposition. To improve detection quality and reduce false positives, a classical post-processing step is applied to candidate corner points identified by the quantum circuit. Results show that the proposed quantum circuits produce outputs consistent with classical Sobel and Harris operators. Furthermore, the QPIE-based configuration yields more stable and coherent results than FRQI, especially under limited measurement shots. While gradient computation can be performed efficiently at the circuit level, the overall cost remains dominated by state preparation, measurement, and classical post-processing. All experiments are conducted under noiseless simulation, and performance on NISQ hardware may be affected by noise and measurement limitations. Therefore, this work demonstrates a functional and scalable quantum realization of classical edge and corner detection methods rather than an end-to-end speedup.

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