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    Transparent Peer Review By Scholar9

    Paper Title

    CONTENT-BASED VIDEO SHOT BOUNDARY DETECTION USING CANNY EDGE FEATURES

    Description / 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.

    User Profile
    MAHAVEER SIDDAGONI BIKSHAPATHI
    Reviewer 5.0
    User Profile
    Rohan Viswanatha Prasad
    Reviewer 4.8
    User Profile
    PRONOY CHOPRA
    Reviewer 4.8
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    Arnab Kar
    Reviewer 4.6
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    Swathi Garudasu
    Reviewer 4.6

    MAHAVEER SIDDAGONI BIKSHAPATHI Reviewer

    badge Review Request Accepted

    MAHAVEER SIDDAGONI BIKSHAPATHI Reviewer

    badge Approved

    Relevance and Originality

    Methodology

    Validity & Reliability

    Clarity and Structure

    Results and Analysis

    Relevance and Originality

    The Research Article tackles Video Shot Boundary Detection (VSBD), a core task in video analysis crucial for indexing, summarization, and editing. By using Canny edge features, the study contributes an efficient and computationally lightweight approach compared to complex models. The emphasis on abrupt cut detection is valuable, filling a gap between traditional feature-based methods and deep learning approaches. Keywords: VSBD, video summarization, computational efficiency.

    Methodology

    The pipeline is described clearly—grayscale conversion, edge extraction, normalized ECR computation, and thresholding. This systematic flow demonstrates strong design clarity. Still, justification for parameter settings and potential sensitivity to varying video conditions could be explained in more depth. A comparative discussion with other feature-based or learning-driven methods would further validate the chosen design. Keywords: grayscale, ECR, edge-based pipeline.

    Validity & Reliability

    An average F1-score of 93.17 on standard datasets such as TRECVID indicates convincing reliability and accuracy. The inclusion of precision, recall, and F1-score supports robustness, but the article could benefit from highlighting failure scenarios or edge cases. The extent of generalizability across diverse video genres remains unclear, warranting more discussion. Keywords: robustness, precision, dataset evaluation.

    Clarity and Structure

    The Research Article maintains clarity and logical progression, making the technical details accessible. The concise explanation of the method is well-structured, though more visual illustrations such as comparative plots or detection examples could improve readability. The arguments are coherent, but stronger emphasis on practical applications would enhance engagement. Keywords: readability, coherence, logical flow.

    Result Analysis

    The results convincingly demonstrate the effectiveness of the proposed method with strong performance metrics. However, the focus on abrupt cuts leaves gradual transitions underexplored, slightly limiting scope. Keywords: performance metrics, abrupt cuts, evaluation.

    IJ Publication Publisher

    Respected Sir,

    We appreciate your comprehensive feedback on the Research Article related to Video Shot Boundary Detection. Your acknowledgment of the clarity in the pipeline design, computational efficiency through Canny edge features, and the solid F1-score performance is truly encouraging. At the same time, your observations regarding the need for deeper parameter justification, comparative discussions with alternative methods, and broader exploration of gradual transitions are valuable points that will help refine the work.

    Thank you for highlighting both the strengths and areas for improvement, as this balance is vital for enhancing the overall quality of the study.

    Publisher

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    IJ Publication

    All Reviewers

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    MAHAVEER SIDDAGONI BIKSHAPATHI

    Reviewer
    User Profile

    Rohan Viswanatha Prasad

    Reviewer
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    PRONOY CHOPRA

    Reviewer
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    Arnab Kar

    Reviewer
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    Swathi Garudasu

    Reviewer

    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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