similarity module
Where2Explore: Few-shot Affordance Learning for Unseen Novel Categories of Articulated Objects
Articulated object manipulation is a fundamental yet challenging task in robotics. Due to significant geometric and semantic variations across object categories, previous manipulation models struggle to generalize to novel categories. Few-shot learning is a promising solution for alleviating this issue by allowing robots to perform a few interactions with unseen objects.
Where2Explore: Few-shot Affordance Learning for Unseen Novel Categories of Articulated Objects
Articulated object manipulation is a fundamental yet challenging task in robotics. Due to significant geometric and semantic variations across object categories, previous manipulation models struggle to generalize to novel categories. Few-shot learning is a promising solution for alleviating this issue by allowing robots to perform a few interactions with unseen objects.
Proto-OOD: Enhancing OOD Object Detection with Prototype Feature Similarity
Chen, Junkun, Mei, Jilin, Chen, Liang, Zhao, Fangzhou, Hu, Yu
The limited training samples for object detectors commonly result in low accuracy out-of-distribution (OOD) object detection. We have observed that feature vectors of the same class tend to cluster tightly in feature space, whereas those of different classes are more scattered. This insight motivates us to leverage feature similarity for OOD detection. Drawing on the concept of prototypes prevalent in few-shot learning, we introduce a novel network architecture, Proto-OOD, designed for this purpose. Proto-OOD enhances prototype representativeness through contrastive loss and identifies OOD data by assessing the similarity between input features and prototypes. It employs a negative embedding generator to create negative embedding, which are then used to train the similarity module. Proto-OOD achieves significantly lower FPR95 in MS-COCO dataset and higher mAP for Pascal VOC dataset, when utilizing Pascal VOC as ID dataset and MS-COCO as OOD dataset. Additionally, we identify limitations in existing evaluation metrics and propose an enhanced evaluation protocol.
Where2Explore: Few-shot Affordance Learning for Unseen Novel Categories of Articulated Objects
Ning, Chuanruo, Wu, Ruihai, Lu, Haoran, Mo, Kaichun, Dong, Hao
Articulated object manipulation is a fundamental yet challenging task in robotics. Due to significant geometric and semantic variations across object categories, previous manipulation models struggle to generalize to novel categories. Few-shot learning is a promising solution for alleviating this issue by allowing robots to perform a few interactions with unseen objects. However, extant approaches often necessitate costly and inefficient test-time interactions with each unseen instance. Recognizing this limitation, we observe that despite their distinct shapes, different categories often share similar local geometries essential for manipulation, such as pullable handles and graspable edges - a factor typically underutilized in previous few-shot learning works. To harness this commonality, we introduce 'Where2Explore', an affordance learning framework that effectively explores novel categories with minimal interactions on a limited number of instances. Our framework explicitly estimates the geometric similarity across different categories, identifying local areas that differ from shapes in the training categories for efficient exploration while concurrently transferring affordance knowledge to similar parts of the objects. Extensive experiments in simulated and real-world environments demonstrate our framework's capacity for efficient few-shot exploration and generalization.
An Efficient Temporary Deepfake Location Approach Based Embeddings for Partially Spoofed Audio Detection
Xie, Yuankun, Cheng, Haonan, Wang, Yutian, Ye, Long
Partially spoofed audio detection is a challenging task, lying in the need to accurately locate the authenticity of audio at the frame level. To address this issue, we propose a fine-grained partially spoofed audio detection method, namely Temporal Deepfake Location (TDL), which can effectively capture information of both features and locations. Specifically, our approach involves two novel parts: embedding similarity module and temporal convolution operation. To enhance the identification between the real and fake features, the embedding similarity module is designed to generate an embedding space that can separate the real frames from fake frames. To effectively concentrate on the position information, temporal convolution operation is proposed to calculate the frame-specific similarities among neighboring frames, and dynamically select informative neighbors to convolution. Extensive experiments show that our method outperform baseline models in ASVspoof2019 Partial Spoof dataset and demonstrate superior performance even in the crossdataset scenario.