核心概念
A novel approach to construct a versatile pedestrian knowledge bank containing representative and task-compatible pedestrian knowledge that can be leveraged to enhance pedestrian detection performance across diverse scene data.
要約
The paper proposes a method to construct a versatile pedestrian knowledge bank that can be used to improve pedestrian detection performance in various frameworks and diverse scene data.
The key steps are:
- Extract generalized pedestrian knowledge from a large-scale pretrained model (CLIP).
- Curate the extracted knowledge by quantizing the most representative features and guiding them to be distinguishable from background scenes (task-compatible).
- Store the versatile and task-compatible pedestrian knowledge in a bank.
- Leverage the knowledge bank to complement and enhance pedestrian features within a pedestrian detection framework.
The authors validate the effectiveness of the proposed method through comprehensive experiments on four public pedestrian detection datasets, demonstrating state-of-the-art performance and the ability to boost detection across different frameworks and diverse scenes.
統計
"Pedestrian detection has been studied actively as one of major applicable computer vision research [1, 2]."
"Besides, as deep neural networks (DNNs) have emerged, pedestrian detection has also evolved rapidly showing noticeable performances [6, 7]."
"However, it has been discovered that pedestrian features learned within such frameworks are usually fitted to particular scenes used for training, thereby limiting their effectiveness in detecting pedestrians across diverse scenes [13]."
引用
"Therefore, we are motivated by how can we acquire pedestrian representations that can be easily applicable to diverse scene data?"
"Based on generalized knowledge from a large-scale pretrained model, we curate pedestrian representations to be distinctive from various non-object background scenes (task-compatible)."
"After storing them in versatile pedestrian knowledge bank, and we can leverage them into various pedestrian detectors."