Sample images of FruitQ dataset.
<div><p>This study investigates hybrid quantum neural networks for fruit quality assessment, with a focus on the impact of the entangling gate choice. Two architectures were developed: NNQEv1, utilizing controlled-NOT (CNOT) gates, and NNQEv2, employing controlled-phase (CZ) gates. A the...
Saved in:
| Main Author: | Danish ul Khairi (19660534) (author) |
|---|---|
| Other Authors: | Kamran Ahsan (10413151) (author), Syed Zeeshan Ali (19660531) (author), Wadee Alhalabi (11951405) (author), Somayah Albaradei (9041843) (author), Muhammad Shahid Anwar (19660537) (author) |
| Published: |
2025
|
| Subjects: | |
| Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Similar Items
-
Test accuracy (%) of NNQEv1 and NNQEv2 with different optimizers across 1 to 5 layers on the apple dataset.
by: Danish ul Khairi (19660534)
Published: (2025) -
Table comprehensive performance comparison of classical, quantum, and hybrid models across datasets.
by: Danish ul Khairi (19660534)
Published: (2025) -
Comparison of CNOT and CZ gate fidelity and noise characteristics.
by: Danish ul Khairi (19660534)
Published: (2025) -
Apple quality classification using different methodology systems.
by: Danish ul Khairi (19660534)
Published: (2025) -
Training accuracy and loss for NNQEv1 and NNQEv2 across 5 layers and 40 epochs.
by: Danish ul Khairi (19660534)
Published: (2025)