Built and benchmarked a smartphone-first road-damage detector using YOLOv5 (with ensembling + test-time augmentation) and Faster R-CNN on the Global Road Damage Detection dataset. Achieved a top-5 leaderboard result (F1 0.68) across 121 teams while meeting a 0.5s/image inference target—enabling practical, low-cost deployment from dashboard-mounted phones. Includes a mapping concept (GPS → segment scores) to guide maintenance prioritization for DOTs and municipalities.
Sep 7, 2025
A practical, side-by-side walkthrough of two ways to stylize images: a custom VGG-19 approach you can fine-tune for unique brand looks, and a pre-trained TensorFlow Hub model that ships fast and scales easily. Includes links, code snippets, and the trade-offs product teams care about (control vs. speed, quality vs. effort).
Sep 7, 2025
Led development of an intelligent video monitoring system that automatically detects moving objects in security footage. Successfully evaluated 8 different detection algorithms across 53 test videos, achieving 96% accuracy in ideal conditions and 82% in challenging lighting scenarios. This solution enables automated security monitoring, parking occupancy tracking, and retail analytics without requiring constant human oversight.
Oct 24, 2023
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Feb 7, 2022
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Feb 7, 2022