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    Transparent Peer Review By Scholar9

    CONTENT-BASED VIDEO SHOT BOUNDARY DETECTION USING CANNY EDGE FEATURES

    Abstract

    Video Shot Boundary Detection (VSBD) is a vital preliminary step in content-based video analysis, enabling efficient indexing, retrieval, summarization, and editing workflows. This paper introduces a robust and computationally efficient method for detecting shot boundaries especially abrupt cuts using the Canny edge features. Our approach employs the following pipeline: frames are converted to grayscale and Canny edge features are extracted. Normalized ECR is computed on consecutive frames, then threshold is set and shot transitions are flagged. We benchmark our method on standard datasets such as TRECVID, evaluating performance in terms of precision, recall, F1-score. Our proposed method average F1-score 93.17.

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    Rohan Viswanatha Prasad Reviewer

    badge Review Request Accepted

    Rohan Viswanatha Prasad Reviewer

    badge Approved

    Relevance and Originality

    Methodology

    Validity & Reliability

    Clarity and Structure

    Results and Analysis

    Relevance and Originality

    The Research Article addresses Video Shot Boundary Detection (VSBD), a critical task for indexing, summarization, and editing in video analysis. By adopting Canny edge features, it proposes a streamlined and efficient approach compared to heavier learning-based techniques. The focus on abrupt cut detection ensures practical applicability, while the contribution lies in balancing high accuracy with computational efficiency, making it both novel and relevant to the field.

    Methodology

    The pipeline is described with clarity, consisting of grayscale conversion, edge feature extraction, normalized ECR computation, and thresholding for shot detection. This structured design is easy to reproduce and demonstrates sound technical planning. However, more discussion on the sensitivity of thresholds across diverse video content and the rationale for parameter settings would enhance methodological rigor. Comparisons with other feature-based approaches could also strengthen the evaluation.

    Validity & Reliability

    The reported performance, with an average F1-score of 93.17 on TRECVID benchmarks, demonstrates reliability and strong empirical support. Inclusion of precision and recall ensures a balanced view of accuracy. Yet, the robustness of the approach for gradual transitions, highly dynamic scenes, or noisy datasets remains underexplored. Acknowledging these limitations would improve confidence in the generalizability of the findings.

    Clarity and Structure

    The Research Article is organized in a logical sequence, beginning with the importance of VSBD, moving through the proposed method, and ending with evaluation results. The explanations are concise, making technical points accessible to readers. Incorporating illustrative figures, detection samples, or comparative tables would further enhance clarity and reader engagement, while a deeper emphasis on real-world applications could add value.

    Result Analysis

    The analysis shows that the method achieves competitive results with strong performance metrics, validating the effectiveness of edge-based detection. However, the narrow focus on abrupt cuts limits broader applicability, as gradual transitions are not sufficiently examined.

    IJ Publication Publisher

    Respected Sir,

    Thank you for sharing your detailed comments on the Research Article concerning Video Shot Boundary Detection. It is encouraging to note your positive feedback on the clarity of the pipeline, efficiency of the Canny edge features, and the strong F1-score performance on TRECVID. At the same time, your remarks regarding threshold sensitivity, limited exploration of gradual transitions, and the need for richer comparative analysis are well taken and will guide necessary improvements.

    We truly appreciate your constructive insights that highlight both the strengths and the scope for enhancement in this work.

    Publisher

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    IJ Publication

    Reviewers

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    Rohan Viswanatha Prasad

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    MAHAVEER SIDDAGONI BIKSHAPATHI

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    Arnab Kar

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    Swathi Garudasu

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    PRONOY CHOPRA

    More Detail

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    Paper Category

    Electronics & Communication

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    Journal Name

    JETIR - Journal of Emerging Technologies and Innovative Research

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    p-ISSN

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    e-ISSN

    2349-5162

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