ObjectAlign: Neuro-Symbolic Object Consistency Verification and Correction
Mustafa Munir, Harsh Goel, Xiwen Wei, Minkyu Choi, Sahil Shah, Kartikeya Bhardwaj, Paul Whatmough, Sandeep Chinchali, Radu Marculescu

TL;DR
ObjectAlign is a neuro-symbolic framework that detects, verifies, and corrects object inconsistencies in edited videos by combining perceptual metrics with formal reasoning, improving video quality and object stability.
Contribution
It introduces learnable thresholds for object consistency metrics and a neuro-symbolic verifier combining SMT-based and probabilistic checks for robust inconsistency detection.
Findings
Up to 1.4 point improvement in CLIP Score
Up to 6.1 point improvement in warp error
Effective correction of object inconsistencies in videos
Abstract
Video editing and synthesis often introduce object inconsistencies, such as frame flicker and identity drift that degrade perceptual quality. To address these issues, we introduce ObjectAlign, a novel framework that seamlessly blends perceptual metrics with symbolic reasoning to detect, verify, and correct object-level and temporal inconsistencies in edited video sequences. The novel contributions of ObjectAlign are as follows: First, we propose learnable thresholds for metrics characterizing object consistency (i.e. CLIP-based semantic similarity, LPIPS perceptual distance, histogram correlation, and SAM-derived object-mask IoU). Second, we introduce a neuro-symbolic verifier that combines two components: (a) a formal, SMT-based check that operates on masked object embeddings to provably guarantee that object identity does not drift, and (b) a temporal fidelity check that uses a…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Visual Attention and Saliency Detection · Adversarial Robustness in Machine Learning
