# Handcrafted and Deep Trackers: Recent Visual Object Tracking Approaches   and Trends

**Authors:** Mustansar Fiaz, Arif Mahmood, Sajid Javed, Soon Ki Jung

arXiv: 1812.07368 · 2019-02-15

## TL;DR

This paper reviews recent advances in visual object tracking, evaluates various trackers' robustness, and introduces a new benchmark, revealing deep features and regularizations enhance tracking performance.

## Contribution

It provides a comprehensive survey of recent trackers, introduces a new benchmark (OTTC), and experimentally compares handcrafted and deep feature-based trackers.

## Key findings

- Deep feature trackers outperform handcrafted ones.
- Fusion of handcrafted and deep features improves performance.
- DCF-based trackers are generally more robust.

## Abstract

In recent years visual object tracking has become a very active research area. An increasing number of tracking algorithms are being proposed each year. It is because tracking has wide applications in various real world problems such as human-computer interaction, autonomous vehicles, robotics, surveillance and security just to name a few. In the current study, we review latest trends and advances in the tracking area and evaluate the robustness of different trackers based on the feature extraction methods. The first part of this work comprises a comprehensive survey of the recently proposed trackers. We broadly categorize trackers into Correlation Filter based Trackers (CFTs) and Non-CFTs. Each category is further classified into various types based on the architecture and the tracking mechanism. In the second part, we experimentally evaluated 24 recent trackers for robustness, and compared handcrafted and deep feature based trackers. We observe that trackers using deep features performed better, though in some cases a fusion of both increased performance significantly. In order to overcome the drawbacks of the existing benchmarks, a new benchmark Object Tracking and Temple Color (OTTC) has also been proposed and used in the evaluation of different algorithms. We analyze the performance of trackers over eleven different challenges in OTTC, and three other benchmarks. Our study concludes that Discriminative Correlation Filter (DCF) based trackers perform better than the others. Our study also reveals that inclusion of different types of regularizations over DCF often results in boosted tracking performance. Finally, we sum up our study by pointing out some insights and indicating future trends in visual object tracking field.

## Full text

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## Figures

29 figures with captions in the complete paper: https://tomesphere.com/paper/1812.07368/full.md

## References

199 references — full list in the complete paper: https://tomesphere.com/paper/1812.07368/full.md

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Source: https://tomesphere.com/paper/1812.07368