CVIVApr 24, 2025

Masked strategies for images with small objects

arXiv:2504.17935v1h-index: 6IJCNN
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific problem in hematology analytics for medical imaging, offering an incremental improvement in segmentation and classification of small objects.

The study tackled the challenge of detecting and classifying small blood components in images by investigating mask ratios and patch sizes in a masked autoencoder (MAE) to improve reconstruction and using pre-trained ViT encoder weights for semantic segmentation with a U-Net Transformer. Results showed that smaller mask ratios and patch sizes enhanced image reconstruction, and pre-training benefited segmentation of smaller blood components.

The hematology analytics used for detection and classification of small blood components is a significant challenge. In particular, when objects exists as small pixel-sized entities in a large context of similar objects. Deep learning approaches using supervised models with pre-trained weights, such as residual networks and vision transformers have demonstrated success for many applications. Unfortunately, when applied to images outside the domain of learned representations, these methods often result with less than acceptable performance. A strategy to overcome this can be achieved by using self-supervised models, where representations are learned and weights are then applied for downstream applications. Recently, masked autoencoders have proven to be effective to obtain representations that captures global context information. By masking regions of an image and having the model learn to reconstruct both the masked and non-masked regions, weights can be used for various applications. However, if the sizes of the objects in images are less than the size of the mask, the global context information is lost, making it almost impossible to reconstruct the image. In this study, we investigated the effect of mask ratios and patch sizes for blood components using a MAE to obtain learned ViT encoder representations. We then applied the encoder weights to train a U-Net Transformer for semantic segmentation to obtain both local and global contextual information. Our experimental results demonstrates that both smaller mask ratios and patch sizes improve the reconstruction of images using a MAE. We also show the results of semantic segmentation with and without pre-trained weights, where smaller-sized blood components benefited with pre-training. Overall, our proposed method offers an efficient and effective strategy for the segmentation and classification of small objects.

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