CVAIHCSEAug 25, 2025

Explain and Monitor Deep Learning Models for Computer Vision using Obz AI

arXiv:2508.18188v11 citationsh-index: 1CIKM
Originality Synthesis-oriented
AI Analysis

This addresses the problem of black-box decision-making in computer vision systems for machine learning engineers and practitioners, though it is incremental as it builds on existing XAI methods.

The paper tackles the lack of transparency in deep learning models for computer vision by developing Obz AI, a software ecosystem that integrates explainable AI techniques with monitoring frameworks to enhance interpretability and observability in practical deployments.

Deep learning has transformed computer vision (CV), achieving outstanding performance in classification, segmentation, and related tasks. Such AI-based CV systems are becoming prevalent, with applications spanning from medical imaging to surveillance. State of the art models such as convolutional neural networks (CNNs) and vision transformers (ViTs) are often regarded as ``black boxes,'' offering limited transparency into their decision-making processes. Despite a recent advancement in explainable AI (XAI), explainability remains underutilized in practical CV deployments. A primary obstacle is the absence of integrated software solutions that connect XAI techniques with robust knowledge management and monitoring frameworks. To close this gap, we have developed Obz AI, a comprehensive software ecosystem designed to facilitate state-of-the-art explainability and observability for vision AI systems. Obz AI provides a seamless integration pipeline, from a Python client library to a full-stack analytics dashboard. With Obz AI, a machine learning engineer can easily incorporate advanced XAI methodologies, extract and analyze features for outlier detection, and continuously monitor AI models in real time. By making the decision-making mechanisms of deep models interpretable, Obz AI promotes observability and responsible deployment of computer vision systems.

Foundations

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