Archive/An Adaptive Attention-Driven Quadruplet Deep Hashing Method for Retrieving Histopathological Images
An Adaptive Attention-Driven Quadruplet Deep Hashing Method for Retrieving Histopathological Images
Seyed Mohammad Alizadeh, Henning Müller, Mohammad Sadegh Helfroush
15. Juli 2026
en

Abstract

Retrieving histopathological images can assist in the recognition and treatment planning of several diseases. Nevertheless, high-dimensional features can make this process complex and inefficient. These challenges can be addressed by encoding the feature domain into binary codes of different lengths utilizing deep hashing approaches. Still, the vanishing gradient challenge remains a concern in these approaches. According to several studies, quadruplet deep hashing models have exhibited promising performance in retrieving images from multi-category datasets. Furthermore, adding an attention module to a convolutional neural network architecture can increase the efficiency of feature extraction. Thus, we introduce an adaptive quadruplet deep hashing model to retrieve histopathological images. Four designed deep hashing models with matching structures and parameters are utilized to produce hash codes. The resulting codes are trained according to a novel adaptive quadruplet loss function. The adaptive structure is capable of improving retrieval performance. The presented approach also suggests a novel hash layer for the vanishing gradient issue. In addition, a simple yet effective attention module is implemented to enhance feature extraction performance. Our model is evaluated on three publicly available histopathology datasets: Kather, Kimia Path960, and Kimia Path24C. The results indicate that the suggested approach achieves the highest mean average precision (MAP) of approximately 0.9940, 0.9983, and 0.9968 for the respective datasets. Based on experiments performed on the datasets, our model surpasses current hashing techniques.

IPC Classification

G06H04

Keywords

adaptiveattention-drivenquadrupletdeephashingretrievinghistopathologicalimagesjournalimagingassistrecognitiontreatmentplanningseveraldiseasesneverthelesshigh-dimensionalfeaturesmakeprocesscomplexinefficientthese
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