 
        |   Algorithm 1 : CROWD-D - Data Discovery Algorithm in CROWD. | 
                         | 
| 
                                \[L_{\text{CROWD}}^{cross} (\theta) = \sum_{i = 1}^{C^t} H_f(K^t_i | U^t; \theta) = \sum_{i = 1}^{C^t} f(K^t_i \cup U^t) - f(U^t)\] \[L_{\text{CROWD}}(\theta) = L_{\text{CROWD}}^{self}(\theta) - \eta L_{\text{CROWD}}^{cross}(\theta)\] |   Figure 3 : Learning strategy in CROWD-L creating a family of learning objectives for OWOD. | 
 
             
        
       
      
        @inproceedings{majee2025crowd,
          title = {Looking Beyond the Known: Towards a Data Discovery Guided Open-World Object Detection},
          author = {Anay Majee and Amitesh Gangrade and Rishabh Iyer},
          booktitle = {The Thirty-ninth Annual Conference on Neural Information Processing Systems (NeurIPS)},
          year = {2025},
        }