Adaptive Remote Sensing Image Attribute Learning for Active Object Detection
This work addresses a domain-specific problem in remote sensing image processing by introducing an active detection framework, though it appears incremental as it builds on existing deep learning and reinforcement learning techniques.
The paper tackles the problem of object detection in remote sensing images being limited by passive frameworks that ignore imaging configuration and detection feedback, proposing an active object detection method using deep reinforcement learning for adaptive brightness and scale adjustments to convert low-quality images into high-quality ones, improving overall performance without retraining the detector.
In recent years, deep learning methods bring incredible progress to the field of object detection. However, in the field of remote sensing image processing, existing methods neglect the relationship between imaging configuration and detection performance, and do not take into account the importance of detection performance feedback for improving image quality. Therefore, detection performance is limited by the passive nature of the conventional object detection framework. In order to solve the above limitations, this paper takes adaptive brightness adjustment and scale adjustment as examples, and proposes an active object detection method based on deep reinforcement learning. The goal of adaptive image attribute learning is to maximize the detection performance. With the help of active object detection and image attribute adjustment strategies, low-quality images can be converted into high-quality images, and the overall performance is improved without retraining the detector.