Paper ID | ARS-1.8 | ||
Paper Title | LOCOP: LOCAL COLLABORATIVE OBJECT PRESENCE FOR SEMANTIC LABELING VIA SCORE MAP RE-INFERENCE | ||
Authors | Lin Guo, Guoliang Fan, Oklahoma State University, United States | ||
Session | ARS-1: Object Detection | ||
Location | Area I | ||
Session Time: | Tuesday, 21 September, 15:30 - 17:00 | ||
Presentation Time: | Tuesday, 21 September, 15:30 - 17:00 | ||
Presentation | Poster | ||
Topic | Image and Video Analysis, Synthesis, and Retrieval: Image & Video Interpretation and Understanding | ||
IEEE Xplore Open Preview | Click here to view in IEEE Xplore | ||
Abstract | Recent research has focused on end-to-end networks for indoor scene semantic labeling. However, in addition to learning bottom-up features, high-level knowledge could be implemented to guide the local classification. In this paper, we take advantage of trained semantic labeling networks by using the intermediate layer output as a per-category local detector and implement the context information in a network structure to boost the semantic segmentation performance. A deep learning-based re-inferencing frame work is proposed to boost any pixel-level labeling outputs using our local collaborative object presence (LoCOP) feature as the global-to-local guidance. Experimental results show that the detection accuracy is improved with our re-inference approach. |