CAT: Centerness-Aware Anchor-Free Tracker

Abstract

Accurate and robust scale estimation in visual object tracking is a challenging task. To obtain a scale estimation of the target object, most methods rely either on a multi-scale searching scheme or on refining a set of predefined anchor boxes. These methods require heuristically selected parameters, such as scale factors of the multi-scale searching scheme, or sizes and aspect ratios of the predefined candidate anchor boxes. On the contrary, a centerness-aware anchor-free tracker (CAT) is designed in this work. First, the location and scale of the target object are predicted in an anchor-free fashion by decomposing tracking into parallel classification and regression problems. The proposed anchor-free design obviates the need for hyperparameters related to the anchor boxes, making CAT more generic and flexible. Second, the proposed centerness-aware classification branch can identify the foreground from the background while predicting the normalized distance from the location within the foreground to the target center, i.e., the centerness. The proposed centerness-aware classification branch improves the tracking accuracy and robustness significantly by suppressing low-quality state estimates. The experiments show that our centerness-aware anchor-free tracker, with its appealing features, achieves salient performance in a wide variety of tracking scenarios.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jan 04, 2022
Source ID
10.3390/s22010354

Entities

People

  • Haoyi Ma
  • Scott T. Acton
  • Zongli Lin

Organizations

  • Army Research Office

Tags

Fields of Study

  • Computer science

Readers

  • Computer Vision.
  • Statistical inference.
  • Systems Analysis and Design