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Tackling Ambiguity in Weakly Supervised Semantic Segmentation through Uncertainty Inference and Affinity Diversification


Conceptos Básicos
The core message of this work is to efficiently tackle the ambiguity-induced false activation issue in both the class activation map generation and pseudo label refinement stages of weakly supervised semantic segmentation through uncertainty inference and affinity diversification.
Resumen

The authors propose a unified single-staged framework called UniA to address the ambiguity problem in weakly supervised semantic segmentation (WSSS). The key insights are:

  1. Uncertainty Inference:
  • The authors model the feature extraction as a Gaussian distribution to capture the complex dependencies among ambiguous regions and avoid the bias towards unrelated objects.
  • An uncertainty estimation is introduced to the class activation map (CAM) generation stage to suppress the false activation caused by ambiguity.
  • A distribution loss is designed to supervise the probabilistic process and maintain the uncertainty level.
  • A soft ambiguity masking strategy is proposed to incorporate the uncertainty into feature learning.
  1. Affinity Diversification:
  • The authors observe that the prevailing affinity-based refinement techniques suffer from the ambiguity and tend to be over-smooth, leading to semantic errors.
  • A mutual complementing refinement is proposed to rectify the ambiguous affinity while saving the most certain semantics from multiple inferred pseudo labels.
  • A contrastive affinity loss is further designed to stably propagate the diversity among ambiguous regions into the feature representations.

Extensive experiments on PASCAL VOC, MS COCO, and medical ACDC datasets demonstrate the superiority of UniA in tackling ambiguity and generating high-quality semantic predictions, especially for objects with fuzzy boundaries.

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Estadísticas
The proposed UniA framework achieves 74.1% mIoU on the PASCAL VOC 2012 validation set, outperforming recent state-of-the-art single-staged and even multi-staged methods. On the MS COCO 2014 validation set, UniA achieves 43.2% mIoU, significantly better than recent single-staged competitors. On the medical ACDC 2017 dataset, UniA achieves 83.75% Dice Similarity Coefficient and 0.21 confusion ratio, outperforming other WSSS methods designed for both natural and medical scenarios.
Citas
"The ambiguity-induced false activation issue in both stages of CAMs and refinement is formally reported in WSSS." "We introduce the uncertainty estimation to this stage for the first time and make the feature representation robust against noisy regions." "We design an affinity diversification module to make the category semantics distinctive from the unrelated regions."

Consultas más profundas

How can the proposed uncertainty inference and affinity diversification strategies be extended to other dense prediction tasks beyond semantic segmentation, such as instance segmentation or panoptic segmentation

The proposed uncertainty inference and affinity diversification strategies can be extended to other dense prediction tasks beyond semantic segmentation by adapting them to the specific requirements of tasks like instance segmentation or panoptic segmentation. For instance segmentation, the uncertainty estimation can be utilized to identify ambiguous regions where multiple instances overlap or where the boundaries between instances are unclear. By incorporating uncertainty into the feature representation, the model can better distinguish between different instances and generate more accurate instance masks. Additionally, the affinity diversification module can be modified to promote diversity among instance representations, ensuring that each instance is accurately segmented without interference from neighboring instances. In the case of panoptic segmentation, which combines semantic segmentation and instance segmentation, the uncertainty inference network can help in distinguishing between stuff and things classes, which are often challenging to differentiate. By estimating uncertainty in regions where stuff and things classes overlap, the model can produce more precise panoptic segmentation results. The affinity diversification module can also be adapted to enhance the pairwise relations between stuff and things classes, improving the overall segmentation quality in panoptic tasks. Overall, by customizing and fine-tuning the uncertainty inference and affinity diversification strategies to suit the specific characteristics and challenges of instance segmentation and panoptic segmentation, these techniques can be effectively extended to a broader range of dense prediction tasks.

What other types of ambiguity, beyond the visual similarity considered in this work, could be addressed in weakly supervised learning, and how can the proposed techniques be adapted to handle those

In weakly supervised learning, beyond visual similarity, other types of ambiguity that could be addressed include contextual ambiguity, temporal ambiguity, and domain-specific ambiguity. Contextual Ambiguity: This type of ambiguity arises when the context in which an object appears makes it challenging to accurately identify or segment. For example, in a crowded scene, objects may be partially occluded or surrounded by similar objects, leading to ambiguity in segmentation. The uncertainty inference strategy can be adapted to capture contextual cues and estimate uncertainty in regions with complex surroundings. The affinity diversification module can also be modified to consider contextual relationships between objects and improve segmentation accuracy in such scenarios. Temporal Ambiguity: In tasks involving video or sequential data, temporal ambiguity may occur when objects or scenes change rapidly over time, making it difficult to track or segment them accurately. By incorporating temporal information into the uncertainty estimation process, the model can account for changes over time and adapt its segmentation strategy accordingly. The affinity diversification techniques can also be extended to consider temporal dependencies and ensure consistency in segmentation across frames. Domain-Specific Ambiguity: Different domains may have unique sources of ambiguity, such as medical images with subtle variations or satellite imagery with complex landscapes. The proposed techniques can be adapted to handle domain-specific ambiguity by training the model on diverse datasets that cover a wide range of variations and challenges specific to the domain. Fine-tuning the uncertainty inference and affinity diversification strategies on domain-specific data can help improve the model's ability to handle ambiguity in that particular domain. By addressing these additional types of ambiguity and customizing the uncertainty inference and affinity diversification strategies to suit the specific challenges of each scenario, weakly supervised learning models can achieve more robust and accurate segmentation results across various domains and contexts.

Given the success of the proposed framework in tackling ambiguity, how can the insights from this work be leveraged to improve the robustness and generalization of deep learning models in the presence of various types of distribution shift or domain shift

The insights from the proposed framework for tackling ambiguity can be leveraged to improve the robustness and generalization of deep learning models in the presence of distribution shift or domain shift by incorporating similar uncertainty estimation and affinity diversification techniques. Robustness to Distribution Shift: By estimating uncertainty in regions where the model is less confident due to distribution shift, the model can adapt its predictions and avoid making erroneous decisions based on out-of-distribution data. The uncertainty inference network can help identify areas of distribution shift, while the affinity diversification module can promote diversity in feature representations to handle variations in the data distribution. Generalization to Domain Shift: When faced with domain shift, where the training and testing data come from different distributions, the uncertainty estimation can help the model identify areas of discrepancy and adjust its predictions accordingly. The affinity diversification strategies can be used to ensure that the model captures the essential features of the data across different domains and avoids overfitting to specific characteristics of one domain. Transfer Learning and Adaptation: The techniques developed in this work can also be applied to transfer learning and domain adaptation scenarios, where the model needs to generalize to new domains with limited labeled data. By leveraging uncertainty estimation and affinity diversification, the model can learn to adapt to new domains more effectively and improve its performance in challenging and diverse environments. Overall, by integrating the insights and methodologies from this work into deep learning models, researchers and practitioners can enhance the robustness, adaptability, and generalization capabilities of their models in the face of distribution shift and domain shift.
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