Adaptive Important Region Selection with Reinforced Hierarchical Search for Dense Object Detection
–Neural Information Processing Systems
Existing state-of-the-art dense object detection techniques tend to produce a large number of false positive detections on difficult images with complex scenes because they focus on ensuring a high recall. To improve the detection accuracy, we propose an Adaptive Important Region Selection ( AIRS) framework guided by Evidential Q-learning coupled with a uniquely designed reward function. Inspired by human visual attention, our detection model conducts object search in a top-down, hierarchical fashion. It starts from the top of the hierarchy with the coarsest granularity and then identifies the potential patches likely to contain objects of interest. It then discards non-informative patches and progressively moves downward on the selected ones for a fine-grained search. The proposed evidential Q-learning systematically encodes epistemic uncertainty in its evidential-Q value to encourage the exploration of unknown patches, especially in the early phase of model training. In this way, the proposed model dynamically balances exploration-exploitation to cover both highly valuable and informative patches. Theoretical analysis and extensive experiments on multiple datasets demonstrate that our proposed framework outperforms the SOT A models.
Neural Information Processing Systems
Aug-19-2025, 23:23:44 GMT
- Country:
- North America > United States (0.46)
- Genre:
- Research Report > New Finding (0.67)
- Workflow (0.92)
- Technology:
- Information Technology > Artificial Intelligence
- Machine Learning
- Neural Networks > Deep Learning (0.93)
- Performance Analysis > Accuracy (0.89)
- Reinforcement Learning (1.00)
- Vision (1.00)
- Machine Learning
- Information Technology > Artificial Intelligence